Monthly Wholesale Trade Survey

1. Objective, Uses and Users

1.1. Objectives

The Monthly Wholesale Trade Survey (MWTS) provides information on the performance of the wholesale trade sector and is an important indicator of the health of the Canadian economy. In addition, the business community uses the data to analyse market performance.

1.2. Use

The estimates provide a measure of the health and performance of the wholesale trade sector. Information collected is used to estimate level and monthly trend for wholesale sales and inventories. At the end of each year, the estimates provide a preliminary look at annual wholesale sales and performance.

1.3. Users

A variety of organizations, sector associations, and levels of government make use of the information. Wholesalers can use the survey results to compare their performance against similar types of businesses, as well as for marketing purposes. Wholesale associations are able to monitor industry performance and promote their wholesale industries. Investors can monitor industry growth, which can result in better access to investment capital by wholesalers. Governments are able to understand the role of wholesalers in the economy, which aid in the development of policies and tax incentives. As an important industry in the Canadian economy (5 to 6% of the Gross Domestic Product, depending on the year), governments are able to better determine the overall health of the economy through the use of the estimates in the calculation of the nation’s Gross Domestic Product (GDP).

2. Concepts, Variables and Classifications

2.1. Concepts

Wholesale trade is generally the intermediate step in the distribution of merchandise. The sector comprises establishments primarily engaged in the buying and selling of merchandise and providing logistics, marketing and support services.

Wholesalers are organized to sell merchandise in large quantities to retailers, business and institutional clients. However, some wholesalers, in particular those that supply non-consumer capital goods, sell merchandise in single units to final users.  The sector recognizes two main types of wholesalers: wholesale merchants and wholesale agents and brokers.

Wholesale merchants buy and sell merchandise on their own account, that is, they take title to the goods they sell. They generally operate from warehouse or office locations and they may ship from their own inventory or arrange for the shipment of goods directly from the supplier to the client. In addition to the sales of goods, they may provide, or arrange for the provision of, logistics, marketing and support services, such as packaging and labelling, inventory management, shipping, handling of warranty claims, in-store or co-op promotions, and product training. Dealers of machinery and equipment, such as dealers of farm machinery and heavy-duty trucks, also fall within this category. They are known by a variety of trade designation depending on their relationship with suppliers or customers, or the distribution method they employ.

Examples include wholesale merchant, wholesale distributor, drop shipper, rack-jobbers, import-export merchants, buying groups, dealer-owned cooperatives and banner wholesalers. For purposes of industrial classification, wholesale merchants are classified by industry according to the principal lines of commodities sold. A description of each industrial group included in the accompanying statistical data is shown in Appendix IV. As most businesses sell several kinds of commodities, the classification assigned to a business generally reflects either the individual commodity or the commodity group which is the primary source of the establishment’s receipts, or some mixture of commodities which characterizes the establishment’s business.

Wholesale Agents and Brokers buy and sell merchandise owned by others on a fee or commission basis. They do not take title to the goods they buy or sell, and they generally operate at or from an office location. Wholesale agents and brokers are known by a variety of trade designations including import-export agents, wholesale commission agents, wholesale brokers, and manufacturer’s representatives’ ad agents.

2.2. Variables

Sales are defined as the sales of all goods purchased for resale, net of returns and discounts. This includes parts used in generating repair and maintenance revenue, labour revenue from repair and maintenance, sales of goods manufactured as a secondary activity by the wholesaler, and revenue from rental and leasing of office space, other real estate, and goods and equipment.  As well, any commission revenue and fees earned from buying and selling merchandise on account of others by wholesale merchants is also included. Other operating revenue such as operating subsidies and grants, shipping, handling, and storing goods for others are excluded.

Inventories are defined as the book value, i.e., the value maintained in the accounting records, of all stock owned at month end and intended for resale. This includes stock in selling outlets, in warehouses, in transit, or on consignment to others. It also includes stock owned within and outside Canada. Inventories held on consignment from others (not owned), and store and office supplies and any other supplies not to be sold are excluded. Trading Location is the physical location(s) in which business activity is conducted in each province and territory, and for which sales are credited or recognized in the financial records of the company. For wholesalers, this would normally be a distribution centre.

Sales in volume: The value of wholesale trade is measured in two ways; including the effects of price change on sales and net of the effects of price change. The first measure is referred to as wholesale trade in current dollars and the latter as wholesale trade in volume. The method of calculating the current dollar estimate is to aggregate the weighted value of sales for all wholesale outlets. The method of calculating the volume estimate is to first adjust the sales values to a base year, using the price indexes, and then sum up the resulting values.

2.3. Classifications

The Monthly Wholesale Trade Survey is based on the definition of wholesale trade under the NAICS (North American Industrial Classification System). NAICS is the agreed upon common framework for the production of comparable statistics by the statistical agencies of Canada, Mexico and the United States. The agreement defines the boundaries of twenty sectors. NAICS is based on a production-oriented, or supply based conceptual framework in that establishments are groups into industries according to similarity in production processes used to produce goods and services.

Estimates appear for 24 industries based on the 2012 North American Industrial Classification System (NAICS) industries. The 24 industries are further aggregated to 7 sub-sectors which correspond exactly to the 3-digit NAICS codes for wholesale trade industries, with the exception of the following: wholesale agents and brokers; and petroleum and oilseed and grain wholesaler-distributors.

Geographically, sales estimates are produced for Canada and each province and territory. Inventory estimates are produced only for Canada as a whole.

3. Coverage and Frames

Statistics Canada’s Business Register (BR) provides the frame for the Monthly Wholesale Trade Survey. The BR is a structured list of businesses engaged in the production of goods and services in Canada. It is a centrally maintained database containing detailed descriptions of most business entities operating within Canada. The BR includes all incorporated businesses, with or without employees. For unincorporated businesses, the BR includes all employer businesses and businesses with no employees with annualized sales that have a Goods and Services Tax (GST) account or annual revenue coming from individual income tax.

The businesses on the BR are represented by a hierarchical structure with four levels, with the statistical enterprise at the top, followed by the statistical company, the statistical establishment and the statistical location. An enterprise can be linked to one or more statistical companies, a statistical company can be linked to one or more statistical establishments, and a statistical establishment to one or more statistical locations.

The target population for the MWTS consists of all statistical establishments on the BR, excluding unincorporated businesses with no employees and with annual sales less than $30,000,.that are classified to the wholesale sector using the North American Industry Classification System (NAICS) (approximately 90,000 establishments). The NAICS code range for wholesale sector is 410000 to 419999. A statistical establishment is the production entity or the smallest grouping of production entities which: produces a homogeneous set of goods or services; does not cross provincial/territorial boundaries; and provides data on the value of output together with the cost of principal intermediate inputs used along with the cost and quantity of labour used to produce the output. The production entity is the physical unit where the business operations are carried out. It must have a civic address and dedicated labour.

The exclusions to the target population are ancillary establishments (producers of services in support of the activity of producing goods and services for the market of more than one establishment within the enterprise, and serves as a cost centre or a discretionary expense centre for which data on all its costs including labour and depreciation can be reported by the business), future establishments, establishments for which economic signals indicate a null or missing revenue, and establishments in the following non-covered NAICS:

  • 41112 (oilseed and grain)
  • 412 (petroleum products)
  • 419 (agents and brokers)

4. Sampling

The MWTS sample consists of 7,500 groups of establishments (clusters) classified to the Wholesale Trade sector selected from the Statistics Canada Business Register. A cluster of establishments is defined as all establishments belonging to a statistical enterprise that are in the same industrial group and geographical region. The MWTS uses a stratified design with simple random sample selection in each stratum. The stratification is done by industrial groups (mainly, but not only four digit level NAICS), and the geographical regions consisting of the provinces and territories. We further stratify the population by size. The size measure is created using a combination of independent survey data and three administrative variables: the annual profiled revenue, the GST sales expressed on an annual basis, and the declared tax revenue (T1 or T2).

The size strata consist of one take-all (census), at most two take-some (partially sampled) strata, and one take-none (non-sampled) stratum. Take-none strata serve to reduce respondent burden by excluding the smaller businesses from the surveyed population. These businesses should represent at most ten percent of total sales. Instead of sending questionnaires to these businesses, the estimates are produced through the use of administrative data.

The sample was allocated optimally in order to reach target coefficients of variation at the national, provincial/territorial, industrial, and industrial groups by province/territory levels. The sample was also inflated to compensate for dead, non-responding, and misclassified units.

MWTS is a repeated survey with maximization of monthly sample overlap. The sample is kept month after month, and every month new units are added (births) to the sample. MWTS births, i.e., new clusters of establishment(s), are identified every month via the BR’s latest universe. They are stratified according to the same criteria as the initial population. A sample of these births is selected according to the sampling fraction of the stratum to which they belong and is added to the monthly sample. Deaths also occur on a monthly basis. A death can be a cluster of establishment(s) that have ceased their activities (out-of-business) or whose major activities are no longer in wholesale trade (out-of-scope). The status of these businesses is updated on the BR using administrative sources and survey feedback, including feedback from the MWTS. Methods to treat dead units and misclassified units are part of the sample and population update procedures.

5. Questionnaire Design

The questionnaire collects monthly data on wholesale sales and the number of trading locations by province or territory and inventories of goods owned and intended for resale from a sample of wholesalers. For the 2004 redesign, most questionnaires were subject to cosmetic changes only, with the exception of the inclusion of Nunavut. The modifications were discussed with stakeholders and the respondents were given an opportunity to comment before the new questionnaire was finalized. If further changes are needed to any of the questionnaires, proposed changes would go through a review committee and a field test with respondents and data users to ensure its relevancy.

6. Response and Non-response

6.1. Response and Non-response

Despite the best efforts of survey managers and operations staff to maximize response in the MWTS, some non-response will occur.

For statistical establishments to be classified as responding, the degree of partial response (where an accurate response is obtained for only some of the questions asked a respondent) must meet a minimum threshold level below which the response would be rejected and considered a unit non-response. In such an instance, the business is classified as not having responded at all.

Non-response has two effects on data: first it introduces bias in estimates when non-respondents differ from respondents in the characteristics measured; and second, it contributes to an increase in the sampling variance of estimates because the effective sample size is reduced from that originally sought.

The degree to which efforts are made to get a response from a non-respondent is based on budget and time constraints, its impact on the overall quality and the risk of non-response bias.

The main method to reduce the impact of non-response at sampling is to inflate the sample size through the use of over-sampling rates that have been determined from similar surveys.

Besides the methods to reduce the impact of non-response at sampling and collection, the non-responses to the survey that do occur are treated through imputation.

In order to measure the amount of non-response that occurs each month various response rates are calculated. For a given reference month, the estimation process is run at least twice (a preliminary and a revised run). Between each run, respondent data can be identified as unusable and imputed values can be corrected through respondent data. As a consequence, response rates are computed following each run of the estimation process.

For the MWTS, two types of rates are calculated (unweighted and weighted). In order to assess the efficiency of the collection process, unweighted response rates are calculated. Weighted rates, using the estimation weight and the value for the variable of interest, assess the quality of estimation. Within each of these types of rates, there are distinct rates for units that are surveyed and for units that are only modeled from administrative data that has been extracted from GST files.

To get a better picture of the success of the collection process, two unweighted rates called the ‘collection results rate’ and the ‘extraction results rate’ are computed. They are computed by dividing the number of respondents by the number of units that we tried to contact or tried to receive extracted data for them. Non-monthly reporters (respondents with special reporting arrangements where they do not report every month but for whom actual data is available in subsequent revisions) are excluded from both the numerator and denominator for the months where no contact is performed.

In summary, the various response rates are calculated as follows:

Weighted rates:

- Survey Response rate (estimation) = Sum of weighted sales of units with response status i / Sum of survey weighted sales

where i = units that have either reported data that will be used in estimation or are converted
refusals, or have reported data that has not yet been resolved for estimation.

- Admin Response rate (estimation) = Sum of weighted sales of units with response status ii / Sum of administrative weighted sales

where ii = units that have data that was extracted from administrative files and are usable for estimation.

- Total Response rate (estimation) = Sum of weighted sales of units with response status i or response status ii / Sum of all weighted sales

Unweighted rates:

- Survey Response rate (collection) = Number of questionnaires with response status iii / Number of questionnaires with response status iv

where iii = units that have either reported data (unresolved, used or not used for estimation) or are converted refusals.

where iv = all of the above plus units that have refused to respond, units that were not contacted and other types of non-respondent units.

- Admin Response rate (extraction) = Number of questionnaires with response status vi / Number of questionnaires with response status vii

where vi = in-scope units that have data (either usable or non-usable) that was extracted from administrative files

where vii = all of the above plus units that have refused to report to the administrative data source, units that were not contacted and other types of non-respondent units.
(% of questionnaire collected over all in-scope questionnaires)

- Collection Results Rate = Number of questionnaires with response status iii / Number of questionnaires with response status viii

where iii = same as iii defined above

where viii = same as iv except for excluded units that were contacted because their response is unavailable for a particular month since they are non-monthly reporters.

- Extraction Results Rate = Number of questionnaires with response status ix / Number of questionnaires with response status vii

where ix = same as vi with the addition of extracted units that have been imputed or were out of scope

where vii = same as vii defined above
(% of questionnaires collected over all questionnaire in-scope we tried to collect)

All the above weighted and unweighted rates are provided at the industrial group, geography and size group level or for any combination of these levels.

Use of Administrative Data:

Managing response burden is an ongoing challenge for Statistics Canada. In an attempt to alleviate response burden and survey costs, especially for smaller businesses, the MWTS has reduced the number of simple establishments in the sample that are surveyed directly and instead derives sales data for these establishments from Goods and Service Tax (GST) files using a statistical model. The model accounts for differences between sales and revenue (reported for GST purposes) as well as for the time lag between the survey reference period and the reference period of the GST file.

Inventories for establishments where sales are GST-based are derived using the MWTS imputation system. The imputation system uses the previous month’s values, the month-to-month and year-to-year changes in similar size establishments which are surveyed.

For more information on the methodology used for modeling sales from administrative data sources, refer to ‘Monthly Wholesale Trade Survey: Use of Administrative Data’ under ‘Documentation’ of the IMDB.

6.2. Methods used to reduce non-response at collection

Significant effort is spent trying to minimize non-response during collection. Methods used, among others, are interviewer techniques such as probing and persuasion, repeated re-scheduling and call-backs to obtain the information, and procedures dealing with how to handle non-compliant (refusal) respondents.

If data are unavailable at the time of collection, a respondent's best estimates are also accepted, and are subsequently revised once the actual data become available. To minimize total non-response for all variables, partial responses are accepted. In addition, questionnaires are customized for the collection of certain variables, such as inventory, so that collection is timed for those months when the data are available.

Finally, to build trust and rapport between the interviewers and respondents, cases are generally assigned to the same interviewer each month. This action establishes a personal relationship between interviewer and respondent, and builds respondent trust.

7. Data Collection and Capture Operations

Collection of the data is performed by Statistics Canada’s Regional Offices. Respondents are sent a questionnaire or are contacted by telephone to obtain their sales and inventory values, as well as to confirm the opening or closing of business trading locations. There is also follow-up of non-response. Collection of the data begins approximately 7 working days after the end of the reference month and continues for the duration of that month.

New entrants to the survey are introduced to the survey via an introductory letter that informs the respondent that a representative of Statistics Canada will be calling. This call is to introduce the respondent to the survey, confirm the respondent's business activity, establish and begin data collection, as well as to answer any questions that the respondent may have.

8. Editing

Data editing is the application of checks to detect missing, invalid or inconsistent entries or to point to data records that are potentially in error. In the survey process for the MWTS, data editing is done at two different time periods.

First of all, editing is done during data collection. Once data are collected via the telephone, or via the receipt of completed mail-in questionnaires, the data are captured using customized data capture applications. All data are subjected to data editing. Edits during data collection are referred to as field edits and generally consist of validity and some simple consistency edits. They are also used to detect mistakes made during the interview by the respondent or the Interviewer and to identify missing information during collection in order to reduce the need for follow-up later on. Another purpose of the field edits is to clean up responses. In the MWTS, the current month’s responses are edited against the respondent’s previous month’s responses and/or the previous year’s responses for the current month.. Field edits are used to identify problems with data collection procedures and the design of the questionnaire, as well as the need for more interviewer training.

Follow-up with respondents occurs to validate potential erroneous data following any failed preliminary edit check of the data. Once validated, the collected data is regularly transmitted to the head office in Ottawa.

Secondly, editing known as statistical editing is also done after data collection and this is more empirical in nature. Statistical editing is run prior to imputation in order to identify the data that will be used as a basis to impute non-respondents. Large outliers that could disrupt a monthly trend are excluded from trend calculations by the statistical edits. It should be noted that adjustments are not made at this stage to correct the reported outliers.

The first step in the statistical editing is to identify which responses will be subjected to the statistical edit rules. Reported data for the current reference month will go through various edit checks.

The first set of edit checks is based on the Hidiroglou-Berthelot method whereby a ratio of the respondent’s current month data over historical (i.e. last month, or same month last year) or administrative data is analyzed. When the respondent’s ratio differs significantly from ratios of respondents who are similar in terms of industrial group and/or geography group, the response is deemed an outlier.

The second set of edits consists of an edit known as the share of market edit. With this method, one is able to edit all respondents even those where historical and auxiliary data is unavailable. The method relies on current month data only. Therefore, within a group of respondents that are similar in terms of industrial group and/or geography, if the weighted contribution of a respondent to the group’s total is too large, it will be flagged as an outlier.

For edit checks based on the Hidiroglou-Berthelot method, data that are flagged as an outlier will not be included in the imputation models (those based on ratios). Also, data that are flagged as outliers in the share of market edit will not be included in the imputation models where means and medians are calculated to impute for responses that have no historical responses.

In conjunction with the statistical editing after data collection of reported data, there is also error detection done on the extracted GST data. Modeled data based on the GST are also subject to an extensive series of processing steps which thoroughly verify each record that is the basis for the model as well as the record being modeled. Edits are performed at a more aggregate level (industry by geography level) to detect records which deviate from the expected range, either by exhibiting large month-to-month change, or differing significantly from the remaining units. All data which fail these edits are subject to manual inspection and possible corrective action.

9. Imputation

Imputation in the MWTS is the process used to assign replacement values for missing data. This is done by assigning values when they are missing on the record being edited to ensure that estimates are of high quality and that a plausible, internal consistency is created. Due to concerns of response burden, cost and timeliness, it is generally impossible to do all follow-ups with the respondents in order to resolve missing responses. Since it is desirable to produce a complete and consistent micro data file, imputation is used to handle the remaining missing cases.

In the MWTS, imputation for missing values can be based on either historical or administrative data. The appropriate method is selected according to a strategy that is based on whether historical data is available, administrative data is available and/or which reference month is being processed.

There are three types of historical imputation methods. The first type is a general trend that uses one historical data source (previous month, data from next month or data from same month previous year). The second type is a regression model where data from previous month and same month previous year are used simultaneously. The third type uses the historical data as a direct replacement value for a non-respondent.

Depending upon the particular reference month, there is an order of preference that exists so that a top quality imputation can result. The historical imputation method that was labelled as the third type above is always the last option in the order for each reference month.

The imputation methods using administrative data are automatically selected when historical information is unavailable for a non-respondent. The administrative data source (annual GST sales) is the basis of these methods. The annual GST sales are used for two types of methods. One is a general trend that will be used for simple structure, e.g. enterprises with only one establishment, and a second type is called median-average that is used for units with a more complex structure.

Finally, it should be noted that inventories in the MWTS where sales are derived from monthly GST data are also imputed by the MWTS imputation systems. The imputed values are calculated using the same imputation methods that are in place for missing data from non-respondents.

10. Estimation

Estimation is a process that approximates unknown population parameters using only the part of the population that is included in a sample. Inferences about these unknown parameters are then made, using the sample data and associated survey design.  This stage uses Statistics Canada's Generalized Estimation System (GES.)

For wholesale sales, the population is divided into a survey portion (take-all and take-some strata) and a non-survey portion (take-none stratum). From the sample that is drawn from the survey portion, an estimate for the population is determined through the use of a Horvitz-Thompson estimator where responses for sales are weighted by using the inverses of the inclusion probabilities of the sampled units. Such weights (called sampling weights) can be interpreted as the number of times that each sampled unit should be replicated to represent the entire population. The calculated weighted sales values are summed by domain, to produce the total sales estimates by each industrial group / geographic area combination. A domain is defined as the most recent classification values available from the BR for the unit and the survey reference period. These domains may differ from the original sampling strata because units may have changed size, industrial group or location. Changes in classification are reflected immediately in the estimates and do not accumulate over time. For the non-survey portion, the sales are estimated with statistical models using monthly GST sales.

For wholesale inventories, the sample selected for estimating sales is used to derive an estimate through the use of a Horvitz-Thompson estimator for the survey portion. A sample-based ratio is then used to produce the estimate for the non-survey portion, and the estimate of the total is derived as the sum of the survey and non-survey portion estimates.

For more information on the methodology for modeling sales from administrative data sources (i.e. GST data) which also contributes to the estimates of the survey portion, refer to ‘Monthly Wholesale Trade Survey: Use of Administrative Data’ under ‘Documentation’ of the IMDB.

The measure of precision used for the MWTS to evaluate the quality of a population parameter estimate and to obtain valid inferences is the variance. The variance from the survey portion is derived directly from a stratified simple random sample without replacement.

Sample estimates may differ from the expected value of the estimates. However, since the estimate is based on a probability sample, the variability of the sample estimate with respect to its expected value can be measured. The variance of an estimate is a measure of the precision of the sample estimate and is defined as the average, over all possible samples, of the squared difference of the estimate from its expected value.

11. Revisions and seasonal adjustment

Revisions in the raw data are required to correct known non-sampling errors. These normally include replacing imputed data with reported data, corrections to previously reported data, and estimates for new births that were not known at the time of the original estimates.

Raw data are revised, on a monthly basis, for the month immediately prior to the current reference month being published. That is, when data for December are being published for the first time, there will also be revisions, if necessary, to the raw data for November. In addition, revisions are made once a year, with the initial release of the February data, for all months in the previous year. The purpose is to correct any significant problems that have been found that apply for an extended period. The actual period of revision depends on the nature of the problem identified, but rarely exceeds three years.

Time series contain the elements essential to the description, explanation and forecasting of the behaviour of an economic phenomenon: "They are statistical records of the evolution of economic processes through time.1 "  Economic time series such as the Monthly Wholesale Trade Survey can be broken down into five main components: the trend-cycle, seasonality, the trading-day effect, the Easter holiday effect and the irregular component.

The trend represents the long-term change in the series, whereas the cycle represents a smooth, quasi-periodical movement about the trend, showing a succession of growth and decline phases (e.g., the business cycle). These two components—the trend and the cycle—are estimated together, and the trend-cycle reflects the fundamental evolution of the series. The other components reflect short-term transient movements.

The seasonal component represents sub-annual, monthly or quarterly fluctuations that recur more or less regularly from one year to the next. Seasonal variations are caused by the direct and indirect effects of the climatic seasons and institutional factors (attributable to social conventions or administrative rules; e.g., Christmas).

The trading-day component originates from the fact that the relative importance of the days varies systematically within the week and that the number of each day of the week in a given month varies from year to year. This effect is present when activity varies with the day of the week. For instance, Sunday is typically less active than the other days, and the number of Sundays, Mondays, etc., in a given month changes from year to year.

The Easter holiday effect is the variation due to the shift of part of April’s activity to March when Easter falls in March rather than April.

Lastly, the irregular component includes all other more or less erratic fluctuations not taken into account in the preceding components. It is a residual that includes errors of measurement on the variable itself as well as unusual events (e.g., strikes, drought, floods, major power blackout or other unexpected events causing variations in respondents’ activities).

Thus, the latter four components—seasonal, irregular, trading-day and Easter holiday effect—all conceal the fundamental trend-cycle component of the series. Seasonal adjustment (correction of seasonal variation) consists in removing the seasonal, trading-day and Easter holiday effect components from the series, and it thus helps reveal the trend-cycle. While seasonal adjustment permits a better understanding of the underlying trend-cycle of a series, the seasonally adjusted series still contains an irregular component. Slight month-to-month variations in the seasonally adjusted series may be simple irregular movements. To get a better idea of the underlying trend, users should examine several months of the seasonally adjusted series.

Since April 2008, Monthly Wholesale Trade Survey data are seasonally adjusted using the X-12-ARIMA2 software. The technique that is used essentially consists of first correcting the initial series for all sorts of undesirable effects, such as the trading-day and the Easter holiday effects, by a module called regARIMA. These effects are estimated using regression models with ARIMA errors (auto-regressive integrated moving average models). The series can also be extrapolated for at least one year by using the model. Subsequently, the raw series—pre-adjusted and extrapolated if applicable— is seasonally adjusted by the X-11 method.

The X-11 method is used for analysing monthly and quarterly series. It is based on an iterative principle applied in estimating the different components, with estimation being done at each stage using adequate moving averages3. The moving averages used to estimate the main components—the trend and seasonality—are primarily smoothing tools designed to eliminate an undesirable component from the series. Since moving averages react poorly to the presence of atypical values, the X-11 method includes a tool for detecting and correcting atypical points. This tool is used to clean up the series during the seasonal adjustment. Outlying data points can also be detected and corrected in advance, within the regARIMA module.

Lastly, the annual totals of the seasonally adjusted series are forced to the annual totals of the original series. Unfortunately, seasonal adjustment removes the sub-annual additivity of a system of series; small discrepancies can be observed between the sum of seasonally adjusted series and the direct seasonal adjustment of their total. To insure or restore additivity in a system of series, a reconciliation process is applied or indirect seasonal adjustment is used, i.e. the seasonal adjustment of a total is derived by the summation of the individually seasonally adjusted series.

12. Data Quality Evaluation

The methodology of this survey has been designed to control errors and to reduce their potential effects on estimates. However, the survey results remain subject to errors, of which sampling error is only one component of the total survey error.

Sampling error results when observations are made only on a sample and not on the entire population. All other errors arising from the various phases of a survey are referred to as non-sampling errors. For example, these types of errors can occur when a respondent provides incorrect information or does not answer certain questions; when a unit in the target population is omitted or covered more than once; when GST data for records being modeled for a particular month are not representative of the actual record for various reasons; when a unit that is out of scope for the survey is included by mistake or when errors occur in data processing, such as coding or capture errors.

Prior to publication, combined survey results are analyzed for comparability; in general, this includes a detailed review of individual responses (especially for large businesses), general economic conditions and historical trends.

A common measure of data quality for surveys is the coefficient of variation (CV). The coefficient of variation, defined as the standard error divided by the sample estimate, is a measure of precision in relative terms. Since the coefficient of variation is calculated from responses of individual units, it also measures some non-sampling errors.

The formula used to calculate coefficients of variation (CV) as percentages is:

CV(X) = (S(X) / X) x 100%

where X denotes the estimate and S(X) denotes the standard error of X.

Confidence intervals can be constructed around the estimates using the estimate and the CV. Thus, for our sample, it is possible to state with a given level of confidence that the expected value will fall within the confidence interval constructed around the estimate. For example, if an estimate of $12,000,000 has a CV of 2%, the standard error will be $240,000 (the estimate multiplied by the CV). It can be stated with 68% confidence that the expected values will fall within the interval whose length equals the standard deviation about the estimate, i.e. between $11,760,000 and $12,240,000. Alternatively, it can be stated with 95% confidence that the expected value will fall within the interval whose length equals two standard deviations about the estimate, i.e. between $11,520,000 and $12,480,000.

Finally, due to the small contribution of the non-survey portion to the total estimates, bias in the non-survey portion has a negligible impact on the CVs. Therefore, the CV from the survey portion is used for the total estimate that is the summation of estimates from the surveyed and non-surveyed portions.

13. Disclosure Control

Statistics Canada is prohibited by law from releasing any data which would divulge information obtained under the Statistics Act that relates to any identifiable person, business or organization without the prior knowledge or the consent in writing of that person, business or organization. Various confidentially rules are applied to all data that are released or published to prevent the publication or disclosure of any information deemed confidential. If necessary, data are suppressed to prevent direct or residual disclosure or identifiable data.

Confidentiality analysis includes the detection of possible “direct disclosure”, which occurs when the value in a tabulation cell is composed of a few respondents or when the cell is dominated by a few companies.

Notes

  1. A Note on the Seasonal adjustment of Economic Time Series», Canadian Statistical Review, August 1974.

  2. For more information, see X-12-ARIMA Reference Manual Version 0.3 (2007), U.S. Census Bureau.

  3. Ladiray, D. and Quenneville, B. (2001). Seasonal Adjustment with the X-11 Method. New York: Springer-Verlag, Lecture Notes in Statistics no. 158.

Sales in volume for Wholesale Trade

Introduction

With the September 2012 release of the Monthly Wholesale Trade Survey (MWTS) results (reference month July 2012), a new deflation methodology for wholesale sales has been implemented.

This new methodology improves on the previous one, and consequently its results are not strictly comparable to those already published, although the overall trends are similar. The CANSIM table 081-0013 containing the previous estimates has been terminated and the improved results can be found in CANSIM table 081-0015.

The purpose of this document is to present the improved methodology for producing the volume measures of sales from the MWTS, as well as highlight the differences from the previous approach.

Purpose of Deflation

Changes in the value of sales collected at current prices (i.e. at the time the sales took place) by the MWTS may be attributable to changes in prices or to changes in quantities sold, or both. To study the activity of the wholesale sector, it is often desirable to remove the variations due to price changes from the values at current prices in order to obtain an indicator of the changes in the quantities sold, i.e. an indicator of the volume of sales. This process is known as deflation.

Derivation of Wholesale Sales Price Indexes

To deflate wholesale sales, suitable price indexes must be used. In the new deflation methodology for wholesale sales, the main price indexes used are the selling price indexes obtained from the Wholesale Services Price Index (WSPI) program. This program produces monthly data that are released on a quarterly basis with about a four month lag. Hence, they are not available in time to deflate the most recent observations of wholesale sales.

It was thus necessary to construct price indexes to extend the WSPI-based ones for the most current months. The growth rates of these derived price indexes are used until they are replaced by the WSPI-based ones once they become available.

In what follows, we describe how price indexes, with base year 2007, are computed for the deflation of wholesale sales. We first describe how the WSPI data are used and then how the derived price indexes are constructed.

Price indexes based on the WSPI

From the WSPI program, monthly selling price indexes are available at the 5-digit North American Industry Classification System (NAICS) industry level. These selling price indexes are weighted together to obtain a sales price index for each of the wholesale trade industries covered by the MWTS. Those industries are called trade groups.

The weights used to combine the selling price indexes into a trade group price index are the proportions of the sales of the 5-digit NAICS industries within each trade group. These weights are obtained from the Annual Wholesale Trade Survey (AWTS). They vary from year to year; i.e. the 2007 proportions of sales are used in 2007, those of 2008 in 2008, and so on. For the two most recent years, the last available annual data from the AWTS are used.

Derived price indexes

To extend the WSPI-based price indexes, derived price indexes for each trade group had to be constructed based on assumptions that capture the main elements thought to affect wholesalers’ selling prices. These derived price indexes are based on the prices of the commodities traded and on the proportion of the fluctuations in the exchange rate of the dollar that is immediately passed on to the trade group’s customers.

a) Main assumptions

Wholesalers trade a portion of the total supply in Canada of a commodity. The total supply is the sum of domestic production and imports. A wholesale price index for each commodity traded is obtained by combining a domestic production price index with an import price index.

Wholesalers sell domestically and on export markets with perhaps differentiated prices. It is assumed however that they set their prices according to the changes in the prices of the commodities that they trade, whether the commodities are exported or not.

It is also assumed that the variations in the price of a commodity are the same across wholesale trade groups. This means that a commodity sold by various trade groups has a unique price index, but the weight of that commodity varies across trade groups.

b) Wholesale commodity prices

A wholesale price index with base year 2007 for each commodity would be obtained by combining a domestic production price index with an import price index using a 2007 import weight. But since there was no wholesale commodity survey in 2007, the commodity imports’ shares were obtained instead from the 2008 Wholesale Origin and Destination of Goods (WODG) data collected on the AWTS.

Most of the domestic production prices are taken from the Industrial Product Price Index program. For some farm products, data from the Farm Product Price Index program are used. The Commercial Software Price Index as well as the Consumer Price Index for Digital Computing Equipment and Devices, adjusted for major sales tax changes, are also used.

For the import components, the fixed weighted (Laspeyres) import price indexes on a customs basis from the International Trade Price Indexes program are used.

c) Trade group prices

The commodities sold by each trade group, as well as their proportions in the group’s total sales, are known from the 2008 WODG results. These proportions are used to combine the wholesale commodity prices into a price index for the trade group’s sales. The trade group price indexes are weighted harmonic means of the commodity price indexes.

For a few trade groups selling a wide variety of commodities, we included only those commodities accounting for at least 95% of the group’s sales, as the exclusion of the other ones with little weight has essentially no effect on the trade group’s price index.

d) Adjustment for the exchange rate of the dollar

Many of the import prices used in the derivation of the wholesale commodity price indexes fully and immediately reflect the exchange rate fluctuations of the dollar. However, wholesalers do not necessarily adjust their prices immediately to compensate for those fluctuations; generally, they will change their prices to reflect only a proportion of them and maybe with a lag.

A comparison of the trade group price indexes with the selling price indexes from the WSPI program showed that the price indexes for many trade groups required an adjustment to remove a bias caused by the incomplete pass-through of the fluctuations in the exchange rate of the dollar.

These pass-through adjustments were evaluated by a linear regression of the ratio of the trade group price index to the WSPI-based price index on the exchange rate of the dollar vis-à-vis the U.S. currency. The adjusted trade group price indexes are the derived price indexes.

e) An exception

For one trade group, NAICS 4142 - Home Entertainment Equipment and Household Appliance Wholesaler-Distributors, it was found that even the adjusted price index was not appropriately tracking the selling price index from the WSPI program.

Hence, for this particular trade group the derived price index is formed instead from a combination of two CPI components, adjusted for major sales tax changes. The two CPI components are those for Audio Equipment and Video Equipment, which are combined using their weights in the CPI.

Derivation of the Volume of Wholesale Sales

As indicated previously, changes in the value of wholesale sales may be attributable to changes in the prices of the commodities sold, or to the quantities sold, or to both. With deflation, a measure of the volume of sales can be obtained for the analysis of the changes in the quantities sold, removing the effect of price changes.

Two measures of the total volume of wholesale sales are computed. One is the volume of sales at constant prices (with and without seasonal adjustment); the other is the volume of sales in chained dollars (only available seasonally adjusted).

Volume at constant prices (Laspeyres formula)

The volume of sales at constant prices uses the relative importance of the products’ prices in a previous period, currently the year 2007, to evaluate the change in the quantities sold. This year is called the base year. The resulting deflated values are said to be “at 2007 prices.” Using the prices of a previous period to measure current activity provides a representative measurement of the current volume of activity with respect to that period.

The price indexes used to obtain the volume of sales at constant prices are the extended price indexes, i.e. the WSPI-based price indexes extended with the derived price indexes described earlier.

The nominal (current dollars) sales of each trade group are divided by their respective extended price index, and then the total volume of sales at constant prices is obtained by adding the volume of sales across the 25 trade groups covered by the MWTS.

The unadjusted and seasonally adjusted volumes at constant prices are computed similarly. In the computation of the seasonally adjusted volume of sales, however, the price indexes are seasonally adjusted directly using the X-12-ARIMA program if appropriate.

Volume in chained dollars (Fisher formula)

The total volume of sales in chained dollars is the geometric mean of two evaluations of the change in the quantities sold between two consecutive months. One evaluation uses the prices of the previous month to evaluate the change; the other uses the prices of the current month.

Since the general tendency for commodity prices is to increase, the evaluation based on the prices of the previous month tends to overstate the change in quantities; i.e. as price increases, buyers tend to buy more of a cheaper commodity. Therefore, using the prices of a previous period to value the quantities bought currently may lead to an overstatement of the change in quantities.

Similarly, the evaluation of the change in the quantities sold using the prices of the current month will tend to understate the change in quantities as this approach gives more weight to the lower priced commodities than to the higher priced ones.

Hence, the geometric average of the two evaluations of the monthly change in quantities (with the previous and current monthly prices) mitigates these under- and over-statements. The volume of sales in chained dollars thus captures the effect of the most recent price changes in the change in volume, as it combines the changes in volume measured with respect to both the current and previous month’s prices.

The total volume of sales in chained dollars is computed monthly, and then the monthly variations are chained (compounded) to provide a time series of the changes in volumes. The time series is then scaled to be equal to the total value of wholesale sales in current dollars for the year 2007.

As the only monthly price and quantity information available are the price and volume data for the 25 trade groups covered by the MWTS, the volume of sales in chained dollars is only computed for the Wholesale Trade sector as a whole.

As well, it is only produced in seasonally adjusted form, since chaining monthly raw volume variations may result in hard-to-interpret monthly fluctuations.

Improvements over the Previous Methodology

The new methodology for the deflation of wholesale sales brings various improvements to the previous one. These improvements include:

  • The use of observed wholesale selling price indexes (when available) instead of derived trade group price indexes.
  • When the WSPI data are not available, a pass-through adjustment is applied if necessary to the derived trade group price indexes. There were no such adjustments previously.
  • An improved derived price index for the trade group NAICS 4142 - Home Entertainment Equipment and Household Appliance Wholesaler-Distributors.
  • Where appropriate, seasonal adjustment is performed directly on the trade group price index. Previously, it was the deflated sales of each trade group that were seasonally adjusted directly.
  • The base year/reference year has been updated from 2002 to 2007.

Volume of Wholesale Sales for 2004-2006

Above, we described how the volume of wholesale sales at 2007 prices was obtained for the period starting in January 2007. But the MWTS data based on NAICS begin in January 2004. In order to provide an as long as possible time series of the volume of wholesale sales, we also deflated the period 2004-2006.

For the year 2006, we used the selling price indexes from the WSPI program as described above. The WSPI-based price indexes were extended in the past, for the period 2004-2005, using the derived trade group price indexes described earlier, with a base year of 2002. That is, the shares of imports in the wholesale commodity prices was assumed to be equal to that in the total Canadian supply of that commodity in 2002 according to the Input-Output Tables. As well, the proportions of each commodity in the sales of each trade group were obtained from the 2001 Wholesale Trade Commodity Survey by Origin and Destination, as there was no wholesale trade commodity survey in 2002.

The segment at 2002 prices for the years 2004-2006 was then linked to the level of the segment at 2007 prices, by preserving its monthly growth rates.

Downloading MARC Records

Download MARC (Machine-Readable Cataloging) records from the Statistics Canada Library.

Z39.50 protocol enables you to search and retrieve MARC records from the Statistics Canada Library database using software connected to the Internet. This service does not require registration, simply configure your ILS Z39.50 server with the following parameters:

Database: Enterprise
Host Name: sttc.sirsidynix.net
Port number: 7619

Once you have configured your ILS Z39.50 server, consult your ILS documentation for how to proceed with downloading Library catalogue MARC records.

Monthly Retail Trade Survey (MRTS) Data Quality Statement

Objectives, uses and users
Concepts, variables and classifications
Coverage and frames
Sampling
Questionnaire design
Response and nonresponse
Data collection and capture operations
Editing
Imputation
Estimation
Revisions and seasonal adjustment
Data quality evaluation
Disclosure control

1. Objectives, uses and users

1.1. Objective

The Monthly Retail Trade Survey (MRTS) provides information on the performance of the retail trade sector on a monthly basis, and when combined with other statistics, represents an important indicator of the state of the Canadian economy.

1.2. Uses

The estimates provide a measure of the health and performance of the retail trade sector. Information collected is used to estimate level and monthly trend for retail sales. At the end of each year, the estimates provide a preliminary look at annual retail sales and performance.

1.3. Users

A variety of organizations, sector associations, and levels of government make use of the information. Retailers rely on the survey results to compare their performance against similar types of businesses, as well as for marketing purposes. Retail associations are able to monitor industry performance and promote their retail industries. Investors can monitor industry growth, which can result in better access to investment capital by retailers. Governments are able to understand the role of retailers in the economy, which aids in the development of policies and tax incentives. As an important industry in the Canadian economy, governments are able to better determine the overall health of the economy through the use of the estimates in the calculation of the nation’s Gross Domestic Product (GDP).

2. Concepts, variables and classifications

2.1. Concepts

The retail trade sector comprises establishments primarily engaged in retailing merchandise, generally without transformation, and rendering services incidental to the sale of merchandise.

The retailing process is the final step in the distribution of merchandise; retailers are therefore organized to sell merchandise in small quantities to the general public. This sector comprises two main types of retailers, that is, store and non-store retailers. The MRTS covers only store retailers. Their main characteristics are described below. Store retailers operate fixed point-of-sale locations, located and designed to attract a high volume of walk-in customers. In general, retail stores have extensive displays of merchandise and use mass-media advertising to attract customers. They typically sell merchandise to the general public for personal or household consumption, but some also serve business and institutional clients. These include establishments such as office supplies stores, computer and software stores, gasoline stations, building material dealers, plumbing supplies stores and electrical supplies stores.

In addition to selling merchandise, some types of store retailers are also engaged in the provision of after-sales services, such as repair and installation. For example, new automobile dealers, electronic and appliance stores and musical instrument and supplies stores often provide repair services, while floor covering stores and window treatment stores often provide installation services. As a general rule, establishments engaged in retailing merchandise and providing after sales services are classified in this sector. Catalogue sales showrooms, gasoline service stations, and mobile home dealers are treated as store retailers.

2.2. Variables

Sales are defined as the sales of all goods purchased for resale, net of returns and discounts. This includes commission revenue and fees earned from selling goods and services on account of others, such as selling lottery tickets, bus tickets, and phone cards. It also includes parts and labour revenue from repair and maintenance; revenue from rental and leasing of goods and equipment; revenues from services, including food services; sales of goods manufactured as a secondary activity; and the proprietor’s withdrawals, at retail, of goods for personal use. Other revenue from rental of real estate, placement fees, operating subsidies, grants, royalties and franchise fees are excluded.

Trading Location is the physical location(s) in which business activity is conducted in each province and territory, and for which sales are credited or recognized in the financial records of the company. For retailers, this would normally be a store.

Sales in volume: The value of retail trade is measured in two ways; including the effects of price change on sales and net of the effects of price change. The first measure is referred to as retail trade in current dollars and the latter as retail trade in constant dollars. The method of calculating the current dollar estimate is to aggregate the weighted value of sales for all retail outlets. The method of calculating the constant dollar estimate is to first adjust the sales values to a base year, using the Consumer Price Index, and then sum up the resulting values.

2.3. Classification

The Monthly Retail Trade Survey is based on the definition of retail trade under the NAICS (North American Industry Classification System). NAICS is the agreed upon common framework for the production of comparable statistics by the statistical agencies of Canada, Mexico and the United States. The agreement defines the boundaries of twenty sectors. NAICS is based on a production-oriented, or supply based conceptual framework in that establishments are groups into industries according to similarity in production processes used to produce goods and services.

Estimates appear for 21 industries based on special aggregations of the 2007 North American Industry Classification System (NAICS) industries. The 21 industries are further aggregated to 11 sub-sectors.

Geographically, sales estimates are produced for Canada and each province and territory.

3. Coverage and frames

Statistics Canada’s Business Register ( BR) provides the frame for the Monthly Retail Trade Survey. The BR is a structured list of businesses engaged in the production of goods and services in Canada. It is a centrally maintained database containing detailed descriptions of most business entities operating within Canada. The BR includes all incorporated businesses, with or without employees. For unincorporated businesses, the BR includes all employers with businesses, and businesses with no employees with annual sales that have a Goods and Services Tax (GST) or annual revenue that declares individual taxes.  annual sales greater than $30,000 that have a Goods and Services Tax (GST) account (the BR does not include unincorporated businesses with no employees and with annual sales less than $30,000).

The businesses on the BR are represented by a hierarchical structure with four levels, with the statistical enterprise at the top, followed by the statistical company, the statistical establishment and the statistical location. An enterprise can be linked to one or more statistical companies, a statistical company can be linked to one or more statistical establishments, and a statistical establishment to one or more statistical locations.

The target population for the MRTS consists of all statistical establishments on the BR that are classified to the retail sector using the North American Industry Classification System (NAICS) (approximately 200,000 establishments). The NAICS code range for the retail sector is 441100 to 453999. A statistical establishment is the production entity or the smallest grouping of production entities which: produces a homogeneous set of goods or services; does not cross provincial boundaries; and provides data on the value of output, together with the cost of principal intermediate inputs used, along with the cost and quantity of labour used to produce the output. The production entity is the physical unit where the business operations are carried out. It must have a civic address and dedicated labour.

The exclusions to the target population are ancillary establishments (producers of services in support of the activity of producing goods and services for the market of more than one establishment within the enterprise, and serves as a cost centre or a discretionary expense centre for which data on all its costs including labour and depreciation can be reported by the business), future establishments, establishments with a missing or a zero gross business income (GBI) value on the BR and establishments in the following non-covered NAICS:

  • 4541 (electronic shopping and mail-order houses)
  • 4542 (vending machine operators)
  • 45431 (fuel dealers)
  • 45439 (other direct selling establishments)

4. Sampling

The MRTS sample consists of 10,000 groups of establishments (clusters) classified to the Retail Trade sector selected from the Statistics Canada Business Register. A cluster of establishments is defined as all establishments belonging to a statistical enterprise that are in the same industrial group and geographical region. The MRTS uses a stratified design with simple random sample selection in each stratum. The stratification is done by industry groups (the mainly, but not only four digit level NAICS), and the geographical regions consisting of the provinces and territories, as well as three provincial sub-regions. We further stratify the population by size.

The size measure is created using a combination of independent survey data and three administrative variables: the annual profiled revenue, the GST sales expressed on an annual basis, and the declared tax revenue (T1 or T2). The size strata consist of one take-all (census), at most, two take-some (partially sampled) strata, and one take-none (non-sampled) stratum. Take-none strata serve to reduce respondent burden by excluding the smaller businesses from the surveyed population. These businesses should represent at most ten percent of total sales. Instead of sending questionnaires to these businesses, the estimates are produced through the use of administrative data.

The sample was allocated optimally in order to reach target coefficients of variation at the national, provincial/territorial, industrial, and industrial groups by province/territory levels. The sample was also inflated to compensate for dead, non-responding, and misclassified units.

MRTS is a repeated survey with maximisation of monthly sample overlap. The sample is kept month after month, and every month new units are added (births) to the sample.  MRTS births, i.e., new clusters of establishment(s), are identified every month via the BR’s latest universe. They are stratified according to the same criteria as the initial population. A sample of these births is selected according to the sampling fraction of the stratum to which they belong and is added to the monthly sample. Deaths occur on a monthly basis. A death can be a cluster of establishment(s) that have ceased their activities (out-of-business) or whose major activities are no longer in retail trade (out-of-scope). The status of these businesses is updated on the BR using administrative sources and survey feedback, including feedback from the MRTS. Methods to treat dead units and misclassified units are part of the sample and population update procedures.

5. Questionnaire design

The Monthly Retail Trade Survey incorporates the following sub-surveys:

Monthly Retail Trade Survey - R8

Monthly Retail Trade Survey (with inventories) – R8

Survey of Sales and Inventories of Alcoholic Beverages

The questionnaires collect monthly data on retail sales and the number of trading locations by province or territory and inventories of goods owned and intended for resale from a sample of retailers. The items on the questionnaires have remained unchanged for several years. For the 2004 redesign, the general questionnaires were subject to cosmetic changes only. The questionnaire for Sales and Inventories of Alcoholic Beverages underwent more extensive changes. The modifications were discussed with stakeholders and the respondents were given an opportunity to comment before the new questionnaire was finalized. If further changes are needed to any of the questionnaires, proposed changes would go through a review committee and a field test with respondents and data users to ensure its relevancy.

6. Response and nonresponse

6.1. Response and non-response

Despite the best efforts of survey managers and operations staff to maximize response in the MRTS, some non-response will occur. For statistical establishments to be classified as responding, the degree of partial response (where an accurate response is obtained for only some of the questions asked a respondent) must meet a minimum threshold level below which the response would be rejected and considered a unit nonresponse.  In such an instance, the business is classified as not having responded at all.

Non-response has two effects on data: first it introduces bias in estimates when nonrespondents differ from respondents in the characteristics measured; and second, it contributes to an increase in the sampling variance of estimates because the effective sample size is reduced from that originally sought.

The degree to which efforts are made to get a response from a non-respondent is based on budget and time constraints, its impact on the overall quality and the risk of nonresponse bias.

The main method to reduce the impact of non-response at sampling is to inflate the sample size through the use of over-sampling rates that have been determined from similar surveys.

Besides the methods to reduce the impact of non-response at sampling and collection, the non-responses to the survey that do occur are treated through imputation. In order to measure the amount of non-response that occurs each month, various response rates are calculated. For a given reference month, the estimation process is run at least twice (a preliminary and a revised run). Between each run, respondent data can be identified as unusable and imputed values can be corrected through respondent data. As a consequence, response rates are computed following each run of the estimation process.

For the MRTS, two types of rates are calculated (un-weighted and weighted). In order to assess the efficiency of the collection process, un-weighted response rates are calculated. Weighted rates, using the estimation weight and the value for the variable of interest, assess the quality of estimation. Within each of these types of rates, there are distinct rates for units that are surveyed and for units that are only modeled from administrative data that has been extracted from GST files.

To get a better picture of the success of the collection process, two un-weighted rates called the ‘collection results rate’ and the ‘extraction results rate’ are computed. They are computed by dividing the number of respondents by the number of units that we tried to contact or tried to receive extracted data for them. Non-monthly reporters (respondents with special reporting arrangements where they do not report every month but for whom actual data is available in subsequent revisions) are excluded from both the numerator and denominator for the months where no contact is performed.

In summary, the various response rates are calculated as follows:

Weighted rates:

Survey Response rate (estimation) =
Sum of weighted sales of units with response status i / Sum of survey weighted sales

where i = units that have either reported data that will be used in estimation or are converted refusals, or have reported data that has not yet been resolved for estimation.

Admin Response rate (estimation) =
Sum of weighted sales of units with response status ii / Sum of administrative weighted sales

where ii = units that have data that was extracted from administrative files and are usable for estimation.

Total Response rate (estimation) =
Sum of weighted sales of units with response status i or response status ii / Sum of all weighted sales

Un-weighted rates:

Survey Response rate (collection) =
Number of questionnaires with response status iii/ Number of questionnaires with response status iv

where iii = units that have either reported data (unresolved, used or not used for estimation) or are converted refusals.

where iv = all of the above plus units that have refused to respond, units that were not contacted and other types of non-respondent units.

Admin Response rate (extraction) =
Number of questionnaires with response status vi/ Number of questionnaires with response status vii

where vi = in-scope units that have data (either usable or non-usable) that was extracted from administrative files

where vii = all of the above plus units that have refused to report to the administrative data source, units that were not contacted and other types of non-respondent units.

(% of questionnaire collected over all in-scope questionnaires)

Collection Results Rate =
Number of questionnaires with response status iii / Number of questionnaires with response status viii

where iii = same as iii defined above

where viii = same as iv except for the exclusion of units that were contacted because their response is unavailable for a particular month since they are non-monthly reporters.

Extraction Results Rate =
Number of questionnaires with response status ix / Number of questionnaires with response status vii

where ix = same as vi with the addition of extracted units that have been imputed or were out of scope

where vii = same as vii defined above

(% of questionnaires collected over all questionnaire in-scope we tried to collect)

All the above weighted and un-weighted rates are provided at the industrial group, geography and size group level or for any combination of these levels.

Use of Administrative Data

Managing response burden is an ongoing challenge for Statistics Canada. In an attempt to alleviate response burden and survey costs, especially for smaller businesses, the MRTS has reduced the number of simple establishments in the sample that are surveyed directly and instead derives sales data for these establishments from Goods and Service Tax (GST) files using a statistical model. The model accounts for differences between sales and revenue (reported for GST purposes) as well as for the time lag between the survey reference period and the reference period of the GST file.

For more information on the methodology used for modeling sales from administrative data sources, refer to ‘Monthly Retail Trade Survey: Use of Administrative Data’ under ‘Documentation’ of the IMDB.

Table 1 contains the weighted response rates for all industry groups as well as for total retail trade for each province and territory. For more detailed weighted response rates, please contact the Marketing and Dissemination Section at (613) 951-3549, toll free: 1-877-421-3067 or by e-mail at retailinfo@statcan.

6.2. Methods used to reduce non-response at collection

Significant effort is spent trying to minimize non-response during collection. Methods used, among others, are interviewer techniques such as probing and persuasion, repeated re-scheduling and call-backs to obtain the information, and procedures dealing with how to handle non-compliant (refusal) respondents.

If data are unavailable at the time of collection, a respondent's best estimates are also accepted, and are subsequently revised once the actual data become available.

To minimize total non-response for all variables, partial responses are accepted. In addition, questionnaires are customized for the collection of certain variables, such as inventory, so that collection is timed for those months when the data are available.

Finally, to build trust and rapport between the interviewers and respondents, cases are generally assigned to the same interviewer each month. This action establishes a personal relationship between interviewer and respondent, and builds respondent trust.

7. Data collection and capture operations

Collection of the data is performed by Statistics Canada’s Regional Offices.

Table 1
Weighted response rates by NAICS, for all provinces/territories: July 2012
Table summary
This table displays the results of weighted response rates by naics weighted response rates, calculated using total, survey and administrative units of measure (appearing as column headers).
  Weighted Response Rates
Total Survey Administrative
NAICS - Canada  
Motor Vehicle and Parts Dealers 90.8 91.5 66.1
Automobile Dealers 92.2 92.6 56.6
New Car DealersNote 1 93.6 93.6  
Used Car Dealers 70.3 72.6 56.6
Other Motor Vehicle Dealers 78.2 79.1 72.9
Automotive Parts, Accessories and Tire Stores 86.9 90.7 63.8
Furniture and Home Furnishings Stores 88 90.9 58.8
Furniture Stores 92.4 93.8 67.4
Home Furnishings Stores 80.4 85.3 53.8
Electronics and Appliance Stores 90.4 91.2 64.9
Building Material and Garden Equipment Dealers 91.9 93.5 78.9
Food and Beverage Stores 85.7 90.9 28.8
Grocery Stores 85.1 91.3 24.1
Grocery (except Convenience) Stores 87.1 93.3 20
Convenience Stores 62.2 64.9 49
Specialty Food Stores 66.2 73.1 41.9
Beer, Wine and Liquor Stores 92.2 93 62.5
Health and Personal Care Stores 82.7 82.5 85.8
Gasoline Stations 84.2 84.7 76
Clothing and Clothing Accessories Stores 89 90.6 39.1
Clothing Stores 90.4 92 29.2
Shoe Stores 89.2 89.3 80.4
Jewellery, Luggage and Leather Goods Stores 79.1 81.6 51.8
Sporting Goods, Hobby, Book and Music Stores 86.4 93.1 32.6
General Merchandise Stores 99.4 99.5 86
Department Stores 100 100  
Other general merchadise stores 98.8 99 86
Miscellaneous Store Retailers 78.3 82.2 48.8
Total 88.9 90.9 55.6
Regions  
Newfoundland and Labrador 94 94.7 75.8
Prince Edward Island 90.8 91.6 43.9
Nova Scotia 94.2 95 77.4
New Brunswick 83.4 85.5 56
Québec 89.2 92.8 46
Ontario 90.2 92.1 56.2
Manitoba 88.1 88.6 66.8
Saskatchewan 88.9 90.2 61.2
Alberta 86.8 87.7 68.9
British Columbia 86.8 88.6 55
Yukon Territory 87.8 87.8  
Northwest Territories 84.1 84.1  
Nunavut 91.5 91.5  
1 There are no administrative records used in new car dealers

Weighted Response Rates

Respondents are sent a questionnaire or are contacted by telephone to obtain their sales and inventory values, as well as to confirm the opening or closing of business trading locations. Collection of the data begins approximately 7 working days after the end of the reference month and continues for the duration of that month.

New entrants to the survey are introduced to the survey via an introductory letter that informs the respondent that a representative of Statistics Canada will be calling. This call is to introduce the respondent to the survey, confirm the respondent's business activity, establish and begin data collection, as well as to answer any questions that the respondent may have.

8. Editing

Data editing is the application of checks to detect missing, invalid or inconsistent entries or to point to data records that are potentially in error. In the survey process for the MRTS, data editing is done at two different time periods.

First of all, editing is done during data collection. Once data are collected via the telephone, or via the receipt of completed mail-in questionnaires, the data are captured using customized data capture applications. All data are subjected to data editing. Edits during data collection are referred to as field edits and generally consist of validity and some simple consistency edits. They are used to detect mistakes made during the interview by the respondent or the interviewer and to identify missing information during collection in order to reduce the need for follow-up later on. Another purpose of the field edits is to clean up responses. In the MRTS, the current month’s responses are edited against the respondent’s previous month’s responses and/or the previous year’s responses for the current month. Field edits are also used to identify problems with data collection procedures and the design of the questionnaire, as well as the need for more interviewer training.

Follow-up with respondents occurs to validate potential erroneous data following any failed preliminary edit check of the data. Once validated, the collected data is regularly transmitted to the head office in Ottawa.

Secondly, editing known as statistical editing is also done after data collection and this is more empirical in nature. Statistical editing is run prior to imputation in order to identify the data that will be used as a basis to impute non-respondents. Large outliers that could disrupt a monthly trend are excluded from trend calculations by the statistical edits. It should be noted that adjustments are not made at this stage to correct the reported outliers.

The first step in the statistical editing is to identify which responses will be subjected to the statistical edit rules. Reported data for the current reference month will go through various edit checks.

The first set of edit checks is based on the Hidiriglou-Berthelot method whereby a ratio of the respondent’s current month data over historical (last month, same month last year) or auxiliary data is analyzed. When the respondent’s ratio differs significantly from ratios of respondents who are similar in terms of industry and/or geography group, the response is deemed an outlier.

The second set of edits consists of an edit known as the share of market edit. With this method, one is able to edit all respondents, even those where historical and auxiliary data is unavailable. The method relies on current month data only. Therefore, within a group of respondents, that are similar in terms of industrial group and/or geography, if the weighted contribution of a respondent to the group’s total is too large, it will be flagged as an outlier.

For edit checks based on the Hidiriglou-Berthelot method, data that are flagged as an outlier will not be included in the imputation models (those based on ratios). Also, data that are flagged as outliers in the share of market edit will not be included in the imputation models where means and medians are calculated to impute for responses that have no historical responses.

In conjunction with the statistical editing after data collection of reported data, there is also error detection done on the extracted GST data. Modeled data based on the GST are also subject to an extensive series of processing steps which thoroughly verify each record that is the basis for the model as well as the record being modeled. Edits are performed at a more aggregate level (industry by geography level) to detect records which deviate from the expected range, either by exhibiting large month-to-month change, or differing significantly from the remaining units. All data which fail these edits are subject to manual inspection and possible corrective action.

9. Imputation

Imputation in the MRTS is the process used to assign replacement values for missing data. This is done by assigning values when they are missing on the record being edited to ensure that estimates are of high quality and that a plausible, internal consistency is created. Due to concerns of response burden, cost and timeliness, it is generally impossible to do all follow-ups with the respondents in order to resolve missing responses. Since it is desirable to produce a complete and consistent microdata file, imputation is used to handle the remaining missing cases.

In the MRTS, imputation is based on historical data or administrative data (GST sales). The appropriate method is selected according to a strategy that is based on whether historical data is available, auxiliary data is available and/or which reference month is being processed.

There are three types of historical imputation methods. The first type is a general trend that uses one historical data source (previous month, data from next month or data from same month previous year). The second type is a regression model where data from previous month and same month previous year are used simultaneously. The third type uses the historical data as a direct replacement value for a non-respondent. Depending upon the particular reference month, there is an order of preference that exists so that top quality imputation can result. The historical imputation method that was labelled as the third type above is always the last option in the order for each reference month.

The imputation methods using administrative data are automatically selected when historical information is unavailable for a non-respondent. The administrative data source (annual GST sales) is the basis of these methods. The annual GST sales are used for two types of methods. One is a general trend that will be used for simple structure, e.g. enterprises with only one establishment, and a second type is called median-average that is used for units with a more complex structure.

10. Estimation

Estimation is a process that approximates unknown population parameters using only part of the population that is included in a sample. Inferences about these unknown parameters are then made, using the sample data and associated survey design. This stage uses Statistics Canada's Generalized Estimation System (GES).

For retail sales, the population is divided into a survey portion (take-all and take-some strata) and a non-survey portion (take-none stratum). From the sample that is drawn from the survey portion, an estimate for the population is determined through the use of a Horvitz-Thompson estimator where responses for sales are weighted by using the inverses of the inclusion probabilities of the sampled units. Such weights (called sampling weights) can be interpreted as the number of times that each sampled unit should be replicated to represent the entire population. The calculated weighted sales values are summed by domain, to produce the total sales estimates by each industrial group / geographic area combination. A domain is defined as the most recent classification values available from the BR for the unit and the survey reference period. These domains may differ from the original sampling strata because units may have changed size, industry or location. Changes in classification are reflected immediately in the estimates and do not accumulate over time. For the non-survey portion, the sales are estimated with statistical models using monthly GST sales.

For more information on the methodology for modeling sales from administrative data sources which also contributes to the estimates of the survey portion, refer to ‘Monthly Retail Survey: Use of Administrative Data’ under ‘Documentation’ of the IMDB.

The measure of precision used for the MRTS to evaluate the quality of a population parameter estimate and to obtain valid inferences is the variance. The variance from the survey portion is derived directly from a stratified simple random sample without replacement.

Sample estimates may differ from the expected value of the estimates. However, since the estimate is based on a probability sample, the variability of the sample estimate with respect to its expected value can be measured. The variance of an estimate is a measure of the precision of the sample estimate and is defined as the average, over all possible samples, of the squared difference of the estimate from its expected value.

11. Revisions and seasonal adjustment

Revisions in the raw data are required to correct known non-sampling errors. These normally include replacing imputed data with reported data, corrections to previously reported data, and estimates for new births that were not known at the time of the original estimates.

Raw data are revised, on a monthly basis, for the month immediately prior to the current reference month being published. That is, when data for December are being published for the first time, there will also be revisions, if necessary, to the raw data for November. In addition, revisions are made once a year, with the initial release of the February data, for all months in the previous year. The purpose is to correct any significant problems that have been found that apply for an extended period. The actual period of revision depends on the nature of the problem identified, but rarely exceeds three years.

Time series contain the elements essential to the description, explanation and forecasting of the behaviour of an economic phenomenon: "They are statistical records of the evolution of economic processes through time."1 Economic time series such as the Monthly Retail Trade Survey can be broken down into five main components: the trend-cycle, seasonality, the trading-day effect, the Easter holiday effect and the irregular component.

The trend represents the long-term change in the series, whereas the cycle represents a smooth, quasi-periodical movement about the trend, showing a succession of growth and decline phases (e.g., the business cycle). These two components—the trend and the cycle—are estimated together, and the trend-cycle reflects the fundamental evolution of the series. The other components reflect short-term transient movements.

The seasonal component represents sub-annual, monthly or quarterly fluctuations that recur more or less regularly from one year to the next. Seasonal variations are caused by the direct and indirect effects of the climatic seasons and institutional factors (attributable to social conventions or administrative rules; e.g., Christmas).

The trading-day component originates from the fact that the relative importance of the days varies systematically within the week and that the number of each day of the week in a given month varies from year to year. This effect is present when activity varies with the day of the week. For instance, Sunday is typically less active than the other days, and the number of Sundays, Mondays, etc., in a given month changes from year to year.

The Easter holiday effect is the variation due to the shift of part of April’s activity to March when Easter falls in March rather than April.

Lastly, the irregular component includes all other more or less erratic fluctuations not taken into account in the preceding components. It is a residual that includes errors of measurement on the 1. A Note on the Seasonal adjustment of Economic Time Series», Canadian Statistical Review, August 1974.  A variable itself as well as unusual events (e.g., strikes, drought, floods, major power blackout or other unexpected events causing variations in respondents’ activities).

Thus, the latter four components—seasonal, irregular, trading-day and Easter holiday effect—all conceal the fundamental trend-cycle component of the series. Seasonal adjustment (correction of seasonal variation) consists in removing the seasonal, trading-day and Easter holiday effect components from the series, and it thus helps reveal the trend-cycle. While seasonal adjustment permits a better understanding of the underlying trend-cycle of a series, the seasonally adjusted series still contains an irregular component. Slight month-to-month variations in the seasonally adjusted series may be simple irregular movements. To get a better idea of the underlying trend, users should examine several months of the seasonally adjusted series.

Since April 2008, Monthly Retail Trade Survey data are seasonally adjusted using the X-12- ARIMA2 software. The technique that is used essentially consists of first correcting the initial series for all sorts of undesirable effects, such as the trading-day and the Easter holiday effects, by a module called regARIMA. These effects are estimated using regression models with ARIMA errors (auto-regressive integrated moving average models). The series can also be extrapolated for at least one year by using the model. Subsequently, the raw series—pre-adjusted and extrapolated if applicable— is seasonally adjusted by the X-11 method.

The X-11 method is used for analysing monthly and quarterly series. It is based on an iterative principle applied in estimating the different components, with estimation being done at each stage using adequate moving averages3. The moving averages used to estimate the main components—the trend and seasonality—are primarily smoothing tools designed to eliminate an undesirable component from the series. Since moving averages react poorly to the presence of atypical values, the X-11 method includes a tool for detecting and correcting atypical points. This tool is used to clean up the series during the seasonal adjustment. Outlying data points can also be detected and corrected in advance, within the regARIMA module.

Lastly, the annual totals of the seasonally adjusted series are forced to the annual totals of the original series.

Unfortunately, seasonal adjustment removes the sub-annual additivity of a system of series; small discrepancies can be observed between the sum of seasonally adjusted series and the direct seasonal adjustment of their total. To insure or restore additivity in a system of series, a reconciliation process is applied or indirect seasonal adjustment is used, i.e. the seasonal adjustment of a total is derived by the summation of the individually seasonally adjusted series.

12. Data quality evaluation

The methodology of this survey has been designed to control errors and to reduce their potential effects on estimates. However, the survey results remain subject to errors, of which sampling error is only one component of the total survey error. Sampling error results when observations are made only on a sample and not on the entire population. All other errors arising from the various phases of a survey are referred to as nonsampling errors. For example, these types of errors can occur when a respondent provides incorrect information or does not answer certain questions; when a unit in the target population is omitted or covered more than once; when GST data for records being modeled for a particular month are not representative of the actual record for various reasons; when a unit that is out of scope for the survey is included by mistake or when errors occur in data processing, such as coding or capture errors.

Prior to publication, combined survey results are analyzed for comparability; in general, this includes a detailed review of individual responses (especially for large businesses), general economic conditions and historical trends.

A common measure of data quality for surveys is the coefficient of variation (CV). The coefficient of variation, defined as the standard error divided by the sample estimate, is a measure of precision in relative terms. Since the coefficient of variation is calculated from responses of individual units, it also measures some non-sampling errors.

The formula used to calculate coefficients of variation (CV) as percentages is:

CV (X) = S(X) * 100% / X
where X denotes the estimate and S(X) denotes the standard error of X.

Confidence intervals can be constructed around the estimates using the estimate and the CV. Thus, for our sample, it is possible to state with a given level of confidence that the expected value will fall within the confidence interval constructed around the estimate. For example, if an estimate of $12,000,000 has a CV of 2%, the standard error will be $240,000 (the estimate multiplied by the CV). It can be stated with 68% confidence that the expected values will fall within the interval whose length equals the standard deviation about the estimate, i.e. between $11,760,000 and $12,240,000.

Alternatively, it can be stated with 95% confidence that the expected value will fall within the interval whose length equals two standard deviations about the estimate, i.e. between $11,520,000 and $12,480,000.

Finally, due to the small contribution of the non-survey portion to the total estimates, bias in the non-survey portion has a negligible impact on the CVs. Therefore, the CV from the survey portion is used for the total estimate that is the summation of estimates from the surveyed and non-surveyed portions.

13. Disclosure control

Statistics Canada is prohibited by law from releasing any data which would divulge information obtained under the Statistics Act that relates to any identifiable person, business or organization without the prior knowledge or the consent in writing of that person, business or organization. Various confidentiality rules are applied to all data that are released or published to prevent the publication or disclosure of any information deemed confidential. If necessary, data are suppressed to prevent direct or residual disclosure of identifiable data.

Confidentiality analysis includes the detection of possible "direct disclosure", which occurs when the value in a tabulation cell is composed of a few respondents or when the cell is dominated by a few companies.

 

Monthly Wholesale Trade Survey Data Quality Statement

1. Objective, Uses and Users

1.1. Objectives

The Monthly Wholesale Trade Survey (MWTS) provides information on the performance of the wholesale trade sector and is an important indicator of the health of the Canadian economy. In addition, the business community uses the data to analyse market performance.

1.2. Use

The estimates provide a measure of the health and performance of the wholesale trade sector. Information collected is used to estimate level and monthly trend for wholesale sales and inventories. At the end of each year, the estimates provide a preliminary look at annual wholesale sales and performance.

1.3. Users

A variety of organizations, sector associations, and levels of government make use of the information. Wholesalers can use the survey results to compare their performance against similar types of businesses, as well as for marketing purposes. Wholesale associations are able to monitor industry performance and promote their wholesale industries. Investors can monitor industry growth, which can result in better access to investment capital by wholesalers. Governments are able to understand the role of wholesalers in the economy, which aid in the development of policies and tax incentives. As an important industry in the Canadian economy (5 to 6% of the Gross Domestic Product, depending on the year), governments are able to better determine the overall health of the economy through the use of the estimates in the calculation of the nation’s Gross Domestic Product (GDP).

2. Concepts, Variables and Classifications

2.1. Concepts

Wholesale trade is generally the intermediate step in the distribution of merchandise. The sector comprises establishments primarily engaged in the buying and selling of merchandise and providing logistics, marketing and support services.

Wholesalers are organized to sell merchandise in large quantities to retailers, business and institutional clients. However, some wholesalers, in particular those that supply non-consumer capital goods, sell merchandise in single units to final users.  The sector recognizes two main types of wholesalers: wholesale merchants and wholesale agents and brokers.

Wholesale merchants buy and sell merchandise on their own account, that is, they take title to the goods they sell. They generally operate from warehouse or office locations and they may ship from their own inventory or arrange for the shipment of goods directly from the supplier to the client. In addition to the sales of goods, they may provide, or arrange for the provision of, logistics, marketing and support services, such as packaging and labelling, inventory management, shipping, handling of warranty claims, in-store or co-op promotions, and product training. Dealers of machinery and equipment, such as dealers of farm machinery and heavy-duty trucks, also fall within this category. They are known by a variety of trade designation depending on their relationship with suppliers or customers, or the distribution method they employ.

Examples include wholesale merchant, wholesale distributor, drop shipper, rack-jobbers, import-export merchants, buying groups, dealer-owned cooperatives and banner wholesalers. For purposes of industrial classification, wholesale merchants are classified by industry according to the principal lines of commodities sold. A description of each industrial group included in the accompanying statistical data is shown in Appendix IV. As most businesses sell several kinds of commodities, the classification assigned to a business generally reflects either the individual commodity or the commodity group which is the primary source of the establishment’s receipts, or some mixture of commodities which characterizes the establishment’s business.

Wholesale Agents and Brokers buy and sell merchandise owned by others on a fee or commission basis. They do not take title to the goods they buy or sell, and they generally operate at or from an office location. Wholesale agents and brokers are known by a variety of trade designations including import-export agents, wholesale commission agents, wholesale brokers, and manufacturer’s representatives’ ad agents.

2.2. Variables

Sales are defined as the sales of all goods purchased for resale, net of returns and discounts. This includes parts used in generating repair and maintenance revenue, labour revenue from repair and maintenance, sales of goods manufactured as a secondary activity by the wholesaler, and revenue from rental and leasing of office space, other real estate, and goods and equipment.  As well, any commission revenue and fees earned from buying and selling merchandise on account of others by wholesale merchants is also included. Other operating revenue such as operating subsidies and grants, shipping, handling, and storing goods for others are excluded.

Inventories are defined as the book value, i.e., the value maintained in the accounting records, of all stock owned at month end and intended for resale. This includes stock in selling outlets, in warehouses, in transit, or on consignment to others. It also includes stock owned within and outside Canada. Inventories held on consignment from others (not owned), and store and office supplies and any other supplies not to be sold are excluded. Trading Location is the physical location(s) in which business activity is conducted in each province and territory, and for which sales are credited or recognized in the financial records of the company. For wholesalers, this would normally be a distribution centre.

Sales in volume: The value of wholesale trade is measured in two ways; including the effects of price change on sales and net of the effects of price change. The first measure is referred to as wholesale trade in current dollars and the latter as wholesale trade in volume. The method of calculating the current dollar estimate is to aggregate the weighted value of sales for all wholesale outlets. The method of calculating the volume estimate is to first adjust the sales values to a base year, using the price indexes, and then sum up the resulting values.

2.3. Classifications

The Monthly Wholesale Trade Survey is based on the definition of wholesale trade under the NAICS (North American Industrial Classification System). NAICS is the agreed upon common framework for the production of comparable statistics by the statistical agencies of Canada, Mexico and the United States. The agreement defines the boundaries of twenty sectors. NAICS is based on a production-oriented, or supply based conceptual framework in that establishments are groups into industries according to similarity in production processes used to produce goods and services.

Estimates appear for 24 industries based on the 2007 North American Industrial Classification System (NAICS) industries. The 24 industries are further aggregated to 7 sub-sectors which correspond exactly to the 3-digit NAICS codes for wholesale trade industries, with the exception of the following: wholesale agents and brokers; and petroleum and oilseed and grain wholesaler-distributors.

Geographically, sales estimates are produced for Canada and each province and territory. Inventory estimates are produced only for Canada as a whole.

3. Coverage and Frames

Statistics Canada’s Business Register (BR) provides the frame for the Monthly Wholesale Trade Survey. The BR is a structured list of businesses engaged in the production of goods and services in Canada. It is a centrally maintained database containing detailed descriptions of most business entities operating within Canada. The BR includes all incorporated businesses, with or without employees. For unincorporated businesses, the BR includes all employer businesses and businesses with no employees with annualized sales that have a Goods and Services Tax (GST) account or annual revenue coming from individual income tax.

The businesses on the BR are represented by a hierarchical structure with four levels, with the statistical enterprise at the top, followed by the statistical company, the statistical establishment and the statistical location. An enterprise can be linked to one or more statistical companies, a statistical company can be linked to one or more statistical establishments, and a statistical establishment to one or more statistical locations.

The target population for the MWTS consists of all statistical establishments on the BR, excluding unincorporated businesses with no employees and with annual sales less than $30,000,.that are classified to the wholesale sector using the North American Industry Classification System (NAICS) (approximately 90,000 establishments). The NAICS code range for wholesale sector is 410000 to 419999. A statistical establishment is the production entity or the smallest grouping of production entities which: produces a homogeneous set of goods or services; does not cross provincial/territorial boundaries; and provides data on the value of output together with the cost of principal intermediate inputs used along with the cost and quantity of labour used to produce the output. The production entity is the physical unit where the business operations are carried out. It must have a civic address and dedicated labour.

The exclusions to the target population are ancillary establishments (producers of services in support of the activity of producing goods and services for the market of more than one establishment within the enterprise, and serves as a cost centre or a discretionary expense centre for which data on all its costs including labour and depreciation can be reported by the business), future establishments, establishments for which economic signals indicate a null or missing revenue, and establishments in the following non-covered NAICS:

  • 41112 (oilseed and grain)
  • 412 (petroleum products)
  • 419 (agents and brokers)

4. Sampling

The MWTS sample consists of 7,500 groups of establishments (clusters) classified to the Wholesale Trade sector selected from the Statistics Canada Business Register. A cluster of establishments is defined as all establishments belonging to a statistical enterprise that are in the same industrial group and geographical region. The MWTS uses a stratified design with simple random sample selection in each stratum. The stratification is done by industrial groups (mainly, but not only four digit level NAICS), and the geographical regions consisting of the provinces and territories. We further stratify the population by size. The size measure is created using a combination of independent survey data and three administrative variables: the annual profiled revenue, the GST sales expressed on an annual basis, and the declared tax revenue (T1 or T2).

The size strata consist of one take-all (census), at most two take-some (partially sampled) strata, and one take-none (non-sampled) stratum. Take-none strata serve to reduce respondent burden by excluding the smaller businesses from the surveyed population. These businesses should represent at most ten percent of total sales. Instead of sending questionnaires to these businesses, the estimates are produced through the use of administrative data.

The sample was allocated optimally in order to reach target coefficients of variation at the national, provincial/territorial, industrial, and industrial groups by province/territory levels. The sample was also inflated to compensate for dead, non-responding, and misclassified units.

MWTS is a repeated survey with maximization of monthly sample overlap. The sample is kept month after month, and every month new units are added (births) to the sample. MWTS births, i.e., new clusters of establishment(s), are identified every month via the BR’s latest universe. They are stratified according to the same criteria as the initial population. A sample of these births is selected according to the sampling fraction of the stratum to which they belong and is added to the monthly sample. Deaths also occur on a monthly basis. A death can be a cluster of establishment(s) that have ceased their activities (out-of-business) or whose major activities are no longer in wholesale trade (out-of-scope). The status of these businesses is updated on the BR using administrative sources and survey feedback, including feedback from the MWTS. Methods to treat dead units and misclassified units are part of the sample and population update procedures.

5. Questionnaire Design

The questionnaire collects monthly data on wholesale sales and the number of trading locations by province or territory and inventories of goods owned and intended for resale from a sample of wholesalers. For the 2004 redesign, most questionnaires were subject to cosmetic changes only, with the exception of the inclusion of Nunavut. The modifications were discussed with stakeholders and the respondents were given an opportunity to comment before the new questionnaire was finalized. If further changes are needed to any of the questionnaires, proposed changes would go through a review committee and a field test with respondents and data users to ensure its relevancy.

6. Response and Non-response

6.1. Response and Non-response

Despite the best efforts of survey managers and operations staff to maximize response in the MWTS, some non-response will occur.

For statistical establishments to be classified as responding, the degree of partial response (where an accurate response is obtained for only some of the questions asked a respondent) must meet a minimum threshold level below which the response would be rejected and considered a unit non-response. In such an instance, the business is classified as not having responded at all.

Non-response has two effects on data: first it introduces bias in estimates when non-respondents differ from respondents in the characteristics measured; and second, it contributes to an increase in the sampling variance of estimates because the effective sample size is reduced from that originally sought.

The degree to which efforts are made to get a response from a non-respondent is based on budget and time constraints, its impact on the overall quality and the risk of non-response bias.

The main method to reduce the impact of non-response at sampling is to inflate the sample size through the use of over-sampling rates that have been determined from similar surveys.

Besides the methods to reduce the impact of non-response at sampling and collection, the non-responses to the survey that do occur are treated through imputation.

In order to measure the amount of non-response that occurs each month various response rates are calculated. For a given reference month, the estimation process is run at least twice (a preliminary and a revised run). Between each run, respondent data can be identified as unusable and imputed values can be corrected through respondent data. As a consequence, response rates are computed following each run of the estimation process.

For the MWTS, two types of rates are calculated (unweighted and weighted). In order to assess the efficiency of the collection process, unweighted response rates are calculated. Weighted rates, using the estimation weight and the value for the variable of interest, assess the quality of estimation. Within each of these types of rates, there are distinct rates for units that are surveyed and for units that are only modeled from administrative data that has been extracted from GST files.

To get a better picture of the success of the collection process, two unweighted rates called the ‘collection results rate’ and the ‘extraction results rate’ are computed. They are computed by dividing the number of respondents by the number of units that we tried to contact or tried to receive extracted data for them. Non-monthly reporters (respondents with special reporting arrangements where they do not report every month but for whom actual data is available in subsequent revisions) are excluded from both the numerator and denominator for the months where no contact is performed.

In summary, the various response rates are calculated as follows:

Weighted rates:

- Survey Response rate (estimation) = Sum of weighted sales of units with response status i / Sum of survey weighted sales

where i = units that have either reported data that will be used in estimation or are converted
refusals, or have reported data that has not yet been resolved for estimation.

- Admin Response rate (estimation) = Sum of weighted sales of units with response status ii / Sum of administrative weighted sales

where ii = units that have data that was extracted from administrative files and are usable for estimation.

- Total Response rate (estimation) = Sum of weighted sales of units with response status i or response status ii / Sum of all weighted sales

Unweighted rates:

- Survey Response rate (collection) = Number of questionnaires with response status iii / Number of questionnaires with response status iv

where iii = units that have either reported data (unresolved, used or not used for estimation) or are converted refusals.

where iv = all of the above plus units that have refused to respond, units that were not contacted and other types of non-respondent units.

- Admin Response rate (extraction) = Number of questionnaires with response status vi / Number of questionnaires with response status vii

where vi = in-scope units that have data (either usable or non-usable) that was extracted from administrative files

where vii = all of the above plus units that have refused to report to the administrative data source, units that were not contacted and other types of non-respondent units.
(% of questionnaire collected over all in-scope questionnaires)

- Collection Results Rate = Number of questionnaires with response status iii / Number of questionnaires with response status viii

where iii = same as iii defined above

where viii = same as iv except for excluded units that were contacted because their response is unavailable for a particular month since they are non-monthly reporters.

- Extraction Results Rate = Number of questionnaires with response status ix / Number of questionnaires with response status vii

where ix = same as vi with the addition of extracted units that have been imputed or were out of scope

where vii = same as vii defined above
(% of questionnaires collected over all questionnaire in-scope we tried to collect)

All the above weighted and unweighted rates are provided at the industrial group, geography and size group level or for any combination of these levels.

Use of Administrative Data:

Managing response burden is an ongoing challenge for Statistics Canada. In an attempt to alleviate response burden and survey costs, especially for smaller businesses, the MWTS has reduced the number of simple establishments in the sample that are surveyed directly and instead derives sales data for these establishments from Goods and Service Tax (GST) files using a statistical model. The model accounts for differences between sales and revenue (reported for GST purposes) as well as for the time lag between the survey reference period and the reference period of the GST file.

Inventories for establishments where sales are GST-based are derived using the MWTS imputation system. The imputation system uses the previous month’s values, the month-to-month and year-to-year changes in similar size establishments which are surveyed.

For more information on the methodology used for modeling sales from administrative data sources, refer to ‘Monthly Wholesale Trade Survey: Use of Administrative Data’ under ‘Documentation’ of the IMDB.

6.2. Methods used to reduce non-response at collection

Significant effort is spent trying to minimize non-response during collection. Methods used, among others, are interviewer techniques such as probing and persuasion, repeated re-scheduling and call-backs to obtain the information, and procedures dealing with how to handle non-compliant (refusal) respondents.

If data are unavailable at the time of collection, a respondent's best estimates are also accepted, and are subsequently revised once the actual data become available. To minimize total non-response for all variables, partial responses are accepted. In addition, questionnaires are customized for the collection of certain variables, such as inventory, so that collection is timed for those months when the data are available.

Finally, to build trust and rapport between the interviewers and respondents, cases are generally assigned to the same interviewer each month. This action establishes a personal relationship between interviewer and respondent, and builds respondent trust.

7. Data Collection and Capture Operations

Collection of the data is performed by Statistics Canada’s Regional Offices. Respondents are sent a questionnaire or are contacted by telephone to obtain their sales and inventory values, as well as to confirm the opening or closing of business trading locations. There is also follow-up of non-response. Collection of the data begins approximately 7 working days after the end of the reference month and continues for the duration of that month.

New entrants to the survey are introduced to the survey via an introductory letter that informs the respondent that a representative of Statistics Canada will be calling. This call is to introduce the respondent to the survey, confirm the respondent's business activity, establish and begin data collection, as well as to answer any questions that the respondent may have.

8. Editing

Data editing is the application of checks to detect missing, invalid or inconsistent entries or to point to data records that are potentially in error. In the survey process for the MWTS, data editing is done at two different time periods.

First of all, editing is done during data collection. Once data are collected via the telephone, or via the receipt of completed mail-in questionnaires, the data are captured using customized data capture applications. All data are subjected to data editing. Edits during data collection are referred to as field edits and generally consist of validity and some simple consistency edits. They are also used to detect mistakes made during the interview by the respondent or the Interviewer and to identify missing information during collection in order to reduce the need for follow-up later on. Another purpose of the field edits is to clean up responses. In the MWTS, the current month’s responses are edited against the respondent’s previous month’s responses and/or the previous year’s responses for the current month.. Field edits are used to identify problems with data collection procedures and the design of the questionnaire, as well as the need for more interviewer training.

Follow-up with respondents occurs to validate potential erroneous data following any failed preliminary edit check of the data. Once validated, the collected data is regularly transmitted to the head office in Ottawa.

Secondly, editing known as statistical editing is also done after data collection and this is more empirical in nature. Statistical editing is run prior to imputation in order to identify the data that will be used as a basis to impute non-respondents. Large outliers that could disrupt a monthly trend are excluded from trend calculations by the statistical edits. It should be noted that adjustments are not made at this stage to correct the reported outliers.

The first step in the statistical editing is to identify which responses will be subjected to the statistical edit rules. Reported data for the current reference month will go through various edit checks.

The first set of edit checks is based on the Hidiroglou-Berthelot method whereby a ratio of the respondent’s current month data over historical (i.e. last month, or same month last year) or administrative data is analyzed. When the respondent’s ratio differs significantly from ratios of respondents who are similar in terms of industrial group and/or geography group, the response is deemed an outlier.

The second set of edits consists of an edit known as the share of market edit. With this method, one is able to edit all respondents even those where historical and auxiliary data is unavailable. The method relies on current month data only. Therefore, within a group of respondents that are similar in terms of industrial group and/or geography, if the weighted contribution of a respondent to the group’s total is too large, it will be flagged as an outlier.

For edit checks based on the Hidiroglou-Berthelot method, data that are flagged as an outlier will not be included in the imputation models (those based on ratios). Also, data that are flagged as outliers in the share of market edit will not be included in the imputation models where means and medians are calculated to impute for responses that have no historical responses.

In conjunction with the statistical editing after data collection of reported data, there is also error detection done on the extracted GST data. Modeled data based on the GST are also subject to an extensive series of processing steps which thoroughly verify each record that is the basis for the model as well as the record being modeled. Edits are performed at a more aggregate level (industry by geography level) to detect records which deviate from the expected range, either by exhibiting large month-to-month change, or differing significantly from the remaining units. All data which fail these edits are subject to manual inspection and possible corrective action.

9. Imputation

Imputation in the MWTS is the process used to assign replacement values for missing data. This is done by assigning values when they are missing on the record being edited to ensure that estimates are of high quality and that a plausible, internal consistency is created. Due to concerns of response burden, cost and timeliness, it is generally impossible to do all follow-ups with the respondents in order to resolve missing responses. Since it is desirable to produce a complete and consistent micro data file, imputation is used to handle the remaining missing cases.

In the MWTS, imputation for missing values can be based on either historical or administrative data. The appropriate method is selected according to a strategy that is based on whether historical data is available, administrative data is available and/or which reference month is being processed.

There are three types of historical imputation methods. The first type is a general trend that uses one historical data source (previous month, data from next month or data from same month previous year). The second type is a regression model where data from previous month and same month previous year are used simultaneously. The third type uses the historical data as a direct replacement value for a non-respondent.

Depending upon the particular reference month, there is an order of preference that exists so that a top quality imputation can result. The historical imputation method that was labelled as the third type above is always the last option in the order for each reference month.

The imputation methods using administrative data are automatically selected when historical information is unavailable for a non-respondent. The administrative data source (annual GST sales) is the basis of these methods. The annual GST sales are used for two types of methods. One is a general trend that will be used for simple structure, e.g. enterprises with only one establishment, and a second type is called median-average that is used for units with a more complex structure.

Finally, it should be noted that inventories in the MWTS where sales are derived from monthly GST data are also imputed by the MWTS imputation systems. The imputed values are calculated using the same imputation methods that are in place for missing data from non-respondents.

10. Estimation

Estimation is a process that approximates unknown population parameters using only the part of the population that is included in a sample. Inferences about these unknown parameters are then made, using the sample data and associated survey design.  This stage uses Statistics Canada's Generalized Estimation System (GES.)

For wholesale sales, the population is divided into a survey portion (take-all and take-some strata) and a non-survey portion (take-none stratum). From the sample that is drawn from the survey portion, an estimate for the population is determined through the use of a Horvitz-Thompson estimator where responses for sales are weighted by using the inverses of the inclusion probabilities of the sampled units. Such weights (called sampling weights) can be interpreted as the number of times that each sampled unit should be replicated to represent the entire population. The calculated weighted sales values are summed by domain, to produce the total sales estimates by each industrial group / geographic area combination. A domain is defined as the most recent classification values available from the BR for the unit and the survey reference period. These domains may differ from the original sampling strata because units may have changed size, industrial group or location. Changes in classification are reflected immediately in the estimates and do not accumulate over time. For the non-survey portion, the sales are estimated with statistical models using monthly GST sales.

For wholesale inventories, the sample selected for estimating sales is used to derive an estimate through the use of a Horvitz-Thompson estimator for the survey portion. A sample-based ratio is then used to produce the estimate for the non-survey portion, and the estimate of the total is derived as the sum of the survey and non-survey portion estimates.

For more information on the methodology for modeling sales from administrative data sources (i.e. GST data) which also contributes to the estimates of the survey portion, refer to ‘Monthly Wholesale Trade Survey: Use of Administrative Data’ under ‘Documentation’ of the IMDB.

The measure of precision used for the MWTS to evaluate the quality of a population parameter estimate and to obtain valid inferences is the variance. The variance from the survey portion is derived directly from a stratified simple random sample without replacement.

Sample estimates may differ from the expected value of the estimates. However, since the estimate is based on a probability sample, the variability of the sample estimate with respect to its expected value can be measured. The variance of an estimate is a measure of the precision of the sample estimate and is defined as the average, over all possible samples, of the squared difference of the estimate from its expected value.

11. Revisions and seasonal adjustment

Revisions in the raw data are required to correct known non-sampling errors. These normally include replacing imputed data with reported data, corrections to previously reported data, and estimates for new births that were not known at the time of the original estimates.

Raw data are revised, on a monthly basis, for the month immediately prior to the current reference month being published. That is, when data for December are being published for the first time, there will also be revisions, if necessary, to the raw data for November. In addition, revisions are made once a year, with the initial release of the February data, for all months in the previous year. The purpose is to correct any significant problems that have been found that apply for an extended period. The actual period of revision depends on the nature of the problem identified, but rarely exceeds three years.

Time series contain the elements essential to the description, explanation and forecasting of the behaviour of an economic phenomenon: "They are statistical records of the evolution of economic processes through time.1 "  Economic time series such as the Monthly Wholesale Trade Survey can be broken down into five main components: the trend-cycle, seasonality, the trading-day effect, the Easter holiday effect and the irregular component.

The trend represents the long-term change in the series, whereas the cycle represents a smooth, quasi-periodical movement about the trend, showing a succession of growth and decline phases (e.g., the business cycle). These two components—the trend and the cycle—are estimated together, and the trend-cycle reflects the fundamental evolution of the series. The other components reflect short-term transient movements.

The seasonal component represents sub-annual, monthly or quarterly fluctuations that recur more or less regularly from one year to the next. Seasonal variations are caused by the direct and indirect effects of the climatic seasons and institutional factors (attributable to social conventions or administrative rules; e.g., Christmas).

The trading-day component originates from the fact that the relative importance of the days varies systematically within the week and that the number of each day of the week in a given month varies from year to year. This effect is present when activity varies with the day of the week. For instance, Sunday is typically less active than the other days, and the number of Sundays, Mondays, etc., in a given month changes from year to year.

The Easter holiday effect is the variation due to the shift of part of April’s activity to March when Easter falls in March rather than April.

Lastly, the irregular component includes all other more or less erratic fluctuations not taken into account in the preceding components. It is a residual that includes errors of measurement on the variable itself as well as unusual events (e.g., strikes, drought, floods, major power blackout or other unexpected events causing variations in respondents’ activities).

Thus, the latter four components—seasonal, irregular, trading-day and Easter holiday effect—all conceal the fundamental trend-cycle component of the series. Seasonal adjustment (correction of seasonal variation) consists in removing the seasonal, trading-day and Easter holiday effect components from the series, and it thus helps reveal the trend-cycle. While seasonal adjustment permits a better understanding of the underlying trend-cycle of a series, the seasonally adjusted series still contains an irregular component. Slight month-to-month variations in the seasonally adjusted series may be simple irregular movements. To get a better idea of the underlying trend, users should examine several months of the seasonally adjusted series.

Since April 2008, Monthly Wholesale Trade Survey data are seasonally adjusted using the X-12-ARIMA2 software. The technique that is used essentially consists of first correcting the initial series for all sorts of undesirable effects, such as the trading-day and the Easter holiday effects, by a module called regARIMA. These effects are estimated using regression models with ARIMA errors (auto-regressive integrated moving average models). The series can also be extrapolated for at least one year by using the model. Subsequently, the raw series—pre-adjusted and extrapolated if applicable— is seasonally adjusted by the X-11 method.

The X-11 method is used for analysing monthly and quarterly series. It is based on an iterative principle applied in estimating the different components, with estimation being done at each stage using adequate moving averages3. The moving averages used to estimate the main components—the trend and seasonality—are primarily smoothing tools designed to eliminate an undesirable component from the series. Since moving averages react poorly to the presence of atypical values, the X-11 method includes a tool for detecting and correcting atypical points. This tool is used to clean up the series during the seasonal adjustment. Outlying data points can also be detected and corrected in advance, within the regARIMA module.

Lastly, the annual totals of the seasonally adjusted series are forced to the annual totals of the original series. Unfortunately, seasonal adjustment removes the sub-annual additivity of a system of series; small discrepancies can be observed between the sum of seasonally adjusted series and the direct seasonal adjustment of their total. To insure or restore additivity in a system of series, a reconciliation process is applied or indirect seasonal adjustment is used, i.e. the seasonal adjustment of a total is derived by the summation of the individually seasonally adjusted series.

12. Data Quality Evaluation

The methodology of this survey has been designed to control errors and to reduce their potential effects on estimates. However, the survey results remain subject to errors, of which sampling error is only one component of the total survey error.

Sampling error results when observations are made only on a sample and not on the entire population. All other errors arising from the various phases of a survey are referred to as non-sampling errors. For example, these types of errors can occur when a respondent provides incorrect information or does not answer certain questions; when a unit in the target population is omitted or covered more than once; when GST data for records being modeled for a particular month are not representative of the actual record for various reasons; when a unit that is out of scope for the survey is included by mistake or when errors occur in data processing, such as coding or capture errors.

Prior to publication, combined survey results are analyzed for comparability; in general, this includes a detailed review of individual responses (especially for large businesses), general economic conditions and historical trends.

A common measure of data quality for surveys is the coefficient of variation (CV). The coefficient of variation, defined as the standard error divided by the sample estimate, is a measure of precision in relative terms. Since the coefficient of variation is calculated from responses of individual units, it also measures some non-sampling errors.

The formula used to calculate coefficients of variation (CV) as percentages is:

CV(X) = (S(X) / X) x 100%

where X denotes the estimate and S(X) denotes the standard error of X.

Confidence intervals can be constructed around the estimates using the estimate and the CV. Thus, for our sample, it is possible to state with a given level of confidence that the expected value will fall within the confidence interval constructed around the estimate. For example, if an estimate of $12,000,000 has a CV of 2%, the standard error will be $240,000 (the estimate multiplied by the CV). It can be stated with 68% confidence that the expected values will fall within the interval whose length equals the standard deviation about the estimate, i.e. between $11,760,000 and $12,240,000. Alternatively, it can be stated with 95% confidence that the expected value will fall within the interval whose length equals two standard deviations about the estimate, i.e. between $11,520,000 and $12,480,000.

Finally, due to the small contribution of the non-survey portion to the total estimates, bias in the non-survey portion has a negligible impact on the CVs. Therefore, the CV from the survey portion is used for the total estimate that is the summation of estimates from the surveyed and non-surveyed portions.

13. Disclosure Control

Statistics Canada is prohibited by law from releasing any data which would divulge information obtained under the Statistics Act that relates to any identifiable person, business or organization without the prior knowledge or the consent in writing of that person, business or organization. Various confidentially rules are applied to all data that are released or published to prevent the publication or disclosure of any information deemed confidential. If necessary, data are suppressed to prevent direct or residual disclosure or identifiable data.

Confidentiality analysis includes the detection of possible “direct disclosure”, which occurs when the value in a tabulation cell is composed of a few respondents or when the cell is dominated by a few companies.

Notes

  1. A Note on the Seasonal adjustment of Economic Time Series», Canadian Statistical Review, August 1974.

  2. For more information, see X-12-ARIMA Reference Manual Version 0.3 (2007), U.S. Census Bureau.

  3. Ladiray, D. and Quenneville, B. (2001). Seasonal Adjustment with the X-11 Method. New York: Springer-Verlag, Lecture Notes in Statistics no. 158.

Who we are, what we do and who does what

Who we are

From start to finish, your survey is in good hands. As a client of Statistics Canada, you are automatically the beneficiary of the same world-class expertise that regularly delivers Canada's social and economic statistics to the nation and the world.

There are no shortcuts to excellence. Every step in the survey process is subjected to exacting quality controls by highly qualified professionals—each trained and experienced in their statistical specialty. Statistics Canada's teams of experts work together with the understanding that all steps in the process are equally important toward achieving peerless results.

What we do

The saying "you get what you pay for" also rings true when it comes to conducting surveys. Having earned its reputation for excellence over many decades of uncompromising dedication to producing factual, unbiased, quality information, Statistics Canada's model of rigorous practices is the standard to which other statistical organizations can only aspire.

When clients hire Statistics Canada to conduct their surveys they are hiring skilled professionals, using state-of-the-art infrastructure, to ensure that their surveys are successful.

Who does what

A great deal of talent, skill and experience defines Statistics Canada's level of service, ensuring that you get the best value for your money:

Survey planners help you to define your information needs and determine the best and most economical way to achieve them.

Methodologists use your input about the kind of information you need to determine the sample design, keeping in mind the data collection method that will maximize your return on investment.

Questionnaire development and design experts create your questionnaire and then test and re-test them to make sure they will measure exactly what you want.

Data collection experts include highly trained interviewers and data collection teams.

Data processors edit, code and weight your collected data, then document each phase of the survey, the file, the record layout, each variable in the file and indicators of data quality.

Analysts interpret the survey results. These are highly skilled and experienced individuals with extensive knowledge about making sense of data.

Disseminators and communicators ensure that your survey receives as widespread attention as you wish.

Communiqué

May 2012

Summary

  • Changes to Canada's domestic travel survey, Travel Survey of Residents of Canada (TSRC), between 2011 and previous years are of sufficient magnitude that they will likely result in a break in the historical series.
  • Based on preliminary findings, survey partners and other users can anticipate changes in the volume/value estimates for 2011 relative to previous years that are beyond the ones expected because of economic or demographic changes.
  • The direction and size of changes in volume/value estimates for 2011 is still unknown and may not be the same across all regions or levels of geography.

Overview of Changes

  • Like the 2010 TSRC, the 2011 study is based on a single rotation of the Labour Force Survey.Footnote 1 Unlike the 2010 version, the new design collects information on overnight trips taken by adult Canadian residents over a two-month rather than one-month period.Footnote 2
  • Between 2010 and 2011, the number of trips for which a respondent was asked to report spending, lodging and activities in a detailed manner changed. Other changes included main purpose categories and the boundaries of in-scope versus out-of-scope trips.Footnote 3
  • For a full description of changes between TSRC 2010 and TSRC 2011, readers are advised to consult Differences Between the 2011 Redesigned TSRC and the 2010 TSRC, available on Statistics Canada's website.Footnote 4

More Specifically

  • In the 2011 survey, limited information is collected for all in-scope reported trips via a trip roster. Depending on the number of trips reported, full details are collected for up to three trips. Details include trip spending, nights spent in lodging types at specific locations, and activities. Statistics Canada's selection system to identify trips to be reported in detail favours out-of-province, more recent and overnight trips.
  • Statistics Canada developed a complex imputation procedure to assign characteristics of fully reported trips to those for which only limited information was captured in the trip roster. Approximately 13% of overnight trips and 25% of same-day trips that were rostered but not explored in detail will have characteristics of other people's trips assigned to them via this imputation procedure. This process could result in some anomalous findings, particularly with respect to activities, lodging types and locations of overnight stays for trips with more than one overnight location.
  • Because the methodologies are different, pooling of the 2010 and 2011 TSRC files is not feasible. Thus, the number of respondent records available for geographic or sector analysis will be smaller than the numbers available in pooled data for 2009 and/or 2010 reference years.Footnote 5

    As a consequence of the two-month recall period for overnight trips, each respondent has the opportunity to report more overnight trips than in the one-month recall surveys of 2009 and 2010. Despite the increase in trip records in the 2011 file (including those with full details reported by the respondent and those with imputed trip characteristics), the total available for analysis falls short of the number of trip records contained in the 2009-2010 pooled file. Thus, data for some sub-provincial locations may be less reliable for 2011 than corresponding estimates from the 2009-2010 pooled files.

  • The manner in which main purpose of trip is asked has changed. As of 2011, respondents are asked whether a trip was for (1) personal or (2) business or work-related reasons. Subsequently, respondents are asked to provide a more specific reason for the trip such as to visit friends or relatives; for holidays, leisure, or recreation; to go to a conference, convention or trade show (business), and the like. Additionally, routine other business trips that were considered out-of-scope prior to 2011 are now considered in-scope.

    Early indications suggest that these conceptual and wording changes may have altered overall volume estimates and the relative shares of trips by main purpose.

What to Expect

  • The TSRC 2011 data file is scheduled for external audit in November 2012 and for release by Statistics Canada in December 2012.Footnote 6
  • Following the TSRC 2011 release, the TSRC Working Group will explore the feasibility of creating adjustment factors at the national and provincial levels to permit comparisons between reference years 2010 and 2011 (bridging).
  • The TSRC Working Group will also examine options for pooling 2011 and 2012 TSRC files.

Introduction

XINT_R01

The Canadian Survey on Disability collects information about adults whose everyday activities are limited due to a condition or health-related problem. The data will be used to plan and evaluate services, programs and policies. It is conducted under the authority of the Statistics Act and is sponsored by Human Resources and Skills Development Canada. Although this survey is voluntary, I hope you will participate as the information could benefit Canadians with activity limitations to help ensure their full participation in society.

XINT_R02

Statistics Canada will combine information collected during the 2011 National Household Survey to the responses you provide in this interview. All information will be kept confidential and used for statistical purposes only.

Disability Screening Questions (XDSQ)

XDSQ_R01B

The following questions are about difficulties you may have doing certain activities. Please tell me only about difficulties or conditions that have lasted or are expected to last for six months or more.

XDSQ_Q01

Do you have any difficulty seeing or hearing?

  1. No
  2. Sometimes
  3. Often
  4. Always

DK, RF

XDSQ_Q02

Do you have any difficulty walking, using stairs, using your hands or fingers, or doing other physical activities?

  1. No
  2. Sometimes
  3. Often
  4. Always

DK, RF

XDSQ_R03

Again, please answer for difficulties or conditions that have lasted or are expected to last for six months or more.

XDSQ_Q03

Do you have any difficulty learning, remembering or concentrating?

  1. No
  2. Sometimes
  3. Often
  4. Always

DK, RF

XDSQ_Q04

Please remember that your answers will be kept strictly confidential.

Do you have any emotional, psychological or mental health conditions?  These may include anxiety, depression, bipolar disorder, substance abuse, anorexia, as well as other conditions.

  1. No
  2. Sometimes
  3. Often
  4. Always

DK, RF

XDSQ_Q05

Do you have any other health problem or condition that has lasted or is expected to last for six months or more?

  1. Yes – Specify
  2. No

DK, RF

XDSQ_S05

(Do you have any other health problem or condition that has lasted or is expected to last for six months or more?)

DK, RF

XDSQ_Q06

How often does this health problem or condition limit your daily activities?

  1. Never
  2. Rarely
  3. Sometimes
  4. Often
  5. Always

DK, RF

XDSQ_Q07

Do you wear glasses or contact lenses to improve your vision?

  1. Yes
  2. No

DK, RF

XDSQ_Q08

[With your glasses or contact lenses, which/Which] of the following best describes your ability to see: You

  1. ... have no difficulty seeing
  2. ... have some difficulty (seeing)
  3. ... have a lot of difficulty (seeing)
  4. ... are blind or legally blind

DK, RF

XDSQ_Q09

How often does this [difficulty/condition] limit your daily activities?

  1. Never
  2. Rarely
  3. Sometimes
  4. Often
  5. Always

DK, RF

XDSQ_Q10

Do you use a hearing aid or cochlear implant?

  1. Yes
  2. No

DK, RF

XDSQ_Q11

[With your hearing aid or cochlear implant, which/Which] of the following best describes your ability to hear: You

  1. ... have no difficulty hearing
  2. ... have some difficulty (hearing)
  3. ... have a lot of difficulty (hearing)
  4. ... cannot hear at all
  5. ... are deaf

DK, RF

XDSQ_Q12

How often does this [difficulty/condition] limit your daily activities?

  1. Never
  2. Rarely
  3. Sometimes
  4. Often
  5. Always

DK, RF

XDSQ_R13

The next questions are about your ability to move around, even when using an aid such as a cane. Again, please answer for any difficulties or conditions that have lasted or are expected to last for six months or more.

XDSQ_Q13

How much difficulty do you have walking on a flat surface for 15 minutes without resting?

  1. No difficulty
  2. Some (difficulty)
  3. A lot (of difficulty)
  4. You cannot do at all

DK, RF

XDSQ_Q14

How much difficulty do you have walking up or down a flight of stairs, about 12 steps without resting?

  1. No difficulty
  2. Some (difficulty)
  3. A lot (of difficulty)
  4. You cannot do at all

DK, RF

XDSQ_Q15

How often [does this difficulty walking limit/does this difficulty using stairs limit/do these difficulties limit] your daily activities?

  1. Never
  2. Rarely
  3. Sometimes
  4. Often
  5. Always

DK, RF

XDSQ_R16

The next questions deal with flexibility and dexterity. (Again, answer for difficulties or conditions that have lasted or are expected to last for 6 months or more.)

XDSQ_Q16

How much difficulty do you have bending down and picking up an object from the floor?

  1. No difficulty
  2. Some (difficulty)
  3. A lot (of difficulty)
  4. You cannot do at all

DK, RF

XDSQ_Q17

How much difficulty do you have reaching in any direction, for example, above your head?

  1. No difficulty
  2. Some (difficulty)
  3. A lot (of difficulty)
  4. You cannot do at all

DK, RF

XDSQ_Q18

How often [does this difficulty bending and picking up an object limit/does this difficulty reaching limit/do these difficulties limit] your daily activities?

  1. Never
  2. Rarely
  3. Sometimes
  4. Often
  5. Always

DK, RF

XDSQ_Q19

How much difficulty do you have using your fingers to grasp small objects like a pencil or scissors?

  1. No difficulty
  2. Some (difficulty)
  3. A lot (of difficulty)
  4. You cannot do at all

DK, RF

XDSQ_Q20

How often does this difficulty using your fingers limit your daily activities?

  1. Never
  2. Rarely
  3. Sometimes
  4. Often
  5. Always

DK, RF

XDSQ_R21

The next questions are about pain due to a condition that has lasted or is expected to last for 6 months or more.

XDSQ_Q21

Do you have pain that is always present?

  1. Yes
  2. No

DK, RF

XDSQ_Q22

Do you have periods of pain that reoccur from time to time?

  1. Yes
  2. No

DK, RF

XDSQ_Q23

How often does this pain limit your daily activities?

  1. Never
  2. Rarely
  3. Sometimes
  4. Often
  5. Always

DK, RF

XDSQ_Q24

When you are experiencing this pain, how much difficulty do you have with your daily activities?

  1. No difficulty
  2. Some (difficulty)
  3. A lot (of difficulty)
  4. You cannot do most activities

DK, RF

XDSQ_Q25

Do you think you have a condition that makes it difficult in general for you to learn? This may include learning disabilities such as dyslexia, hyperactivity, attention problems, as well as other conditions.

  1. Yes
  2. No

DK, RF

XDSQ_Q26

Has a teacher, doctor or other health care professional ever said that you had a learning disability?

  1. Yes
  2. No

DK, RF

XDSQ_Q27

How often are your daily activities limited by this condition?

  1. Never
  2. Rarely
  3. Sometimes
  4. Often
  5. Always

DK, RF

XDSQ_Q28

How much difficulty do you have with your daily activities because of this condition?

  1. No difficulty
  2. Some (difficulty)
  3. A lot (of difficulty)
  4. You cannot do most activities

DK, RF

XDSQ_Q29

Has a doctor, psychologist or other health care professional ever said that you had a developmental disability or disorder? This may include Down syndrome, autism, Asperger syndrome or mental impairment due to lack of oxygen at birth, etc.

  1. Yes
  2. No

DK, RF

XDSQ_Q30

How often are your daily activities limited by this condition?

  1. Never
  2. Rarely
  3. Sometimes
  4. Often
  5. Always

DK, RF

XDSQ_Q31

How much difficulty do you have with your daily activities because of this condition?

  1. No difficulty
  2. Some (difficulty)
  3. A lot (of difficulty)
  4. You cannot do most activities

DK, RF

XDSQ_R32

Again, please answer for any conditions that have lasted or are expected to last for six months or more.

XDSQ_Q32

Do you have any emotional, psychological or mental health conditions?  These may include anxiety disorder, depression, bipolar disorder, substance abuse, anorexia as well as other conditions.

  1. Yes
  2. No

DK, RF

XDSQ_Q33

[You mentioned earlier that you have an emotional, psychological or mental health condition. How /How] often are your daily activities limited by this condition?

  1. Never
  2. Rarely
  3. Sometimes
  4. Often
  5. Always

DK, RF

XDSQ_Q34

When you are experiencing this condition, how much difficulty do you have with your daily activities?

  1. No difficulty
  2. Some (difficulty)
  3. A lot (of difficulty)
  4. You cannot do most activities

DK, RF

XDSQ_Q35

Do you have any ongoing memory problems or periods of confusion?  Exclude occasional forgetfulness such as not remembering where you put your keys.

  1. Yes
  2. No

DK, RF

XDSQ_Q36

How often are your daily activities limited by this problem?

  1. Never
  2. Rarely
  3. Sometimes
  4. Often
  5. Always

DK, RF

XDSQ_Q37

How much difficulty do you have with your daily activities because of this problem?

  1. No difficulty
  2. Some (difficulty)
  3. A lot (of difficulty)
  4. You cannot do most activities

DK, RF

XDSQ_Q38

Do you have any other health problem or condition that has lasted or is expected to last for six months or more?

  1. Yes - Specify
  2. No

DK, RF

XDSQ_S38

(Do you have any other health problem or condition that has lasted or is expected to last for six months or more?)

DK, RF

XDSQ_Q39

How often does this health problem or condition limit your daily activities?

  1. Never
  2. Rarely
  3. Sometimes
  4. Often
  5. Always

DK, RF

Main Cause (XMAC)

XMAC_R01

You reported earlier that you have a condition or health problem that limits your daily activities.

XMAC_Q01

At what age did you first start having any difficulty or activity limitation?

(Difficulty or activity limitation(s) mentioned earlier: [each value collected from Disability Screening Questions [XDSQ])

_ _ _ Years
DK, RF

XMAC_R02

We've been discussing various limitations that people may face. Now, I'd like to ask you about the main condition that may contribute to the difficulties that you have mentioned.

XMAC_Q02

What is the main medical condition which causes you the most difficulty or limits your activities?

- Main condition #1:
- Main condition #2:

DK, RF

XMAC_Q03

Which of the following best describes the cause of [this condition, (which is (refers to XMAC_Q02 main condition #1 response)/the second condition you mentioned, (refers to XMAC_Q02 main condition #2 response)]?

  1. Existed at birth
  2. Disease or illness
  3. Non-work related accident or injury
  4. Work-related cause ( e.g. accident, injury, exposure to toxins, high levels of stress)
  5. Ageing
  6. Undetermined cause
  7. Another cause

DK, RF

XMAC_S03

(Which of the following best describes the cause of [this condition, (which is (refers to XMAC_Q02 main condition #1 response)/the second condition you mentioned, (refers to XMAC_Q02 main condition #2 response)]?)

DK, RF

Aids and Assistive Devices (XAAD)

XAAD_R01A

The next questions are about aids and assistive devices you may use for your condition(s). By assistive device, we mean any device or tool that is designed or adapted to help a person perform a particular task or activity.

XAAD_R01B

Now some questions about aids and assistive devices that you may use to help with a hearing condition.

XAAD_Q01A

Because of your condition, do you use: a TTY ?

  1. Yes
  2. No

DK, RF

XAAD_Q01B

(Because of your condition, do you use:) other telephone related devices, such as volume controllers or flashers?

  1. Yes
  2. No

DK, RF

XAAD_Q01C

(Do you use:) a cell phone or smart phone with specialized features to help with a hearing condition?

  1. Yes
  2. No

DK, RF

XAAD_Q01D

(Do you use:) a computer or similar device to communicate, because of a hearing condition, for example via e-mail, chat service or instant messenger?

  1. Yes
  2. No

DK, RF

XAAD_Q01E
Because of your condition, do you use: closed captioning or subtitles for TV shows and movies?

  1. Yes
  2. No

DK, RF

XAAD_Q01F

(Because of your condition, do you use:) visual or vibrating alarms or alerts?

  1. Yes
  2. No

DK, RF

XAAD_Q01G

(Because of your condition, do you use:) amplifiers such as FM , loop systems or infra-red?

  1. Yes
  2. No

DK, RF

XAAD_Q01H

(Because of your condition, do you use:) a cochlear implant or other implant?

  1. Yes
  2. No

DK, RF

XAAD_Q01I

(Because of your condition, do you use:) a hearing aid?

  1. Yes
  2. No

DK, RF

XAAD_Q02

Do you use any other aid or assistive device for a hearing condition?

  1. Yes
  2. No

DK, RF

XAAD_S02

What is this?

DK, RF

XAAD_Q03

Are there any aids or assistive devices for a hearing condition that you think you need but do not have?

  1. Yes
  2. No

DK, RF

XAAD_Q04

Which aids or assistive devices do you need but do not have?

  1. TTY
  2. Other telephone related devices, such as volume controllers or flashers
  3. Cell phone or smart phone with specialized features
  4. Computer or similar device to communicate (e-mail, chat service, IM )
  5. Closed captioning or subtitles for TV /movies
  6. Visual or vibrating alarms or alerts
  7. Amplifiers ( FM , loop systems, infra-red)
  8. Cochlear implant or other implant
  9. Hearing aid
  10. Other – Specify

DK, RF

XAAD_S04

(Which aids or assistive devices do you need but do not have?)

DK, RF

XAAD_Q05A

Why do you not have (refers to XAAD_Q04 response(s))?

  1. Cost (too expensive to purchase)
  2. Not covered by insurance
  3. Not able or willing to upgrade from current aid/device
  4. Don’t know how/where to get aid/device
  5. Not available locally
  6. On a waiting list
  7. Available aids cannot be adapted for respondent’s situation
  8. No reason stated

DK, RF

XAAD_R05B

The next questions ask about ways you may communicate to help with a hearing condition.

XAAD_Q05B

Do you lip read?

  1. Yes
  2. No
  3. Not applicable

DK, RF

XAAD_Q05C

Do you use sign language such as ASL or LSQ ?

  1. Yes
  2. No
  3. Not applicable

DK, RF

XAAD_Q05D

How often do you use a sign language interpreter?

  1. Every day
  2. At least once a week
  3. At least once a month
  4. At least once every six months
  5. Less than once every six months
  6. Never
  7. Not applicable

DK, RF

XAAD_R06

Now some questions about aids and assistive devices that you may use to help with a seeing condition.

XAAD_Q06A

Because of your condition, do you use: magnifiers?

  1. Yes
  2. No

DK, RF

XAAD_Q06B

(Because of your condition, do you use:) closed circuit devices ( e.g. , CCTV ’s)?

  1. Yes
  2. No

DK, RF

XAAD_Q06C

Because of your condition, do you use: large print reading materials?

  1. Yes
  2. No

DK, RF

XAAD_Q06D

(Because of your condition, do you use:) dark lined paper or dark ink pens?

  1. Yes
  2. No

DK, RF

XAAD_Q06E

(Because of your condition, do you use:) Braille reading materials or a manual Brailler?

  1. Yes
  2. No

DK, RF

XAAD_Q06F

(Because of your condition, do you use:) a white cane or identification cane?

  1. Yes
  2. No

DK, RF

XAAD_Q06G

(Because of your condition, do you use:) a service animal?

  1. Yes
  2. No

DK, RF

XAAD_Q06H

Do you use: a talking GPS to help with a seeing condition?

  1. Yes
  2. No

DK, RF

XAAD_Q06I

Because of your condition, do you use: recording equipment or a portable note-taking device?

  1. Yes
  2. No

DK, RF

XAAD_Q06J

Because of your condition, do you use: a device for playing audio books or e-books?

  1. Yes
  2. No

DK, RF

XAAD_Q06K

(Do you use:) a cell phone or smart phone with specialized features to help with a seeing condition?

  1. Yes
  2. No

DK, RF

XAAD_Q06L

(Do you use:) a personal computer or laptop with specialized software or other adaptations to help with a seeing condition?

  1. Yes
  2. No

DK, RF

XAAD_Q07A

Because of your condition, does your personal computer or laptop have: speech to text, text to speech or voice recognition software?

  1. Yes
  2. No

DK, RF

XAAD_Q07B

(Because of your condition, does your personal computer or laptop have:) screen magnification software?

  1. Yes
  2. No

DK, RF

XAAD_Q07C

Because of your condition, does your personal computer or laptop have: a scanner?

  1. Yes
  2. No

DK, RF

XAAD_Q07D

(Because of your condition, does your personal computer or laptop have:) a Braille embosser or refreshable Braille display?

  1. Yes
  2. No

DK, RF

XAAD_Q07E

(Does your personal computer or laptop have:) any other software or adaptation to help with a seeing condition?

  1. Yes
  2. No

DK, RF

XAAD_Q08

Do you use any other aid or assistive device for a seeing condition?

  1. Yes
  2. No

DK, RF

XAAD_S08

What is this?

DK, RF

XAAD_Q09

Are there any aids or assistive devices for a seeing condition that you think you need but do not have?

  1. Yes
  2. No

DK, RF

XAAD_Q10

Which aids or assistive devices do you need but do not have?

  1. Magnifiers
  2. CCTV
  3. Large print reading materials
  4. Dark lined paper or dark ink pens
  5. Braille reading materials or manual Brailler
  6. White cane or identification cane
  7. Service animal
  8. Talking GPS
  9. Recording equipment or portable note-taking device
  10. Device for playing audio books or e-books
  11. Cell phone or smart phone with specialized features
  12. Personal computer or laptop with specialized software or other adaptations
  13. Speech to text, text to speech or voice recognition software
  14. Screen magnification software
  15. Scanner
  16. Braille embosser or refreshable Braille display
  17. Other – Specify

DK, RF

XAAD_S10

(Which aids or assistive devices do you need but do not have?)

DK, RF

XAAD_Q11

Why do you not have (refers to XAAD_Q10 response(s))?

  1. Cost (too expensive to purchase)
  2. Not covered by insurance
  3. Not able or willing to upgrade from current aid/device
  4. Don’t know how/where to get aid/device
  5. Not available locally
  6. On a waiting list
  7. Available aids cannot be adapted for respondent’s situation
  8. No reason stated

DK, RF

XAAD_R12

Now some questions about aids and assistive devices that you may use for moving around, to help with bending or reaching or to help with fine motor skills.

XAAD_Q12A

Because of your condition, do you use: a cane, walking stick or crutches?

  1. Yes
  2. No

DK, RF

XAAD_Q12B

(Because of your condition, do you use:) a walker?

  1. Yes
  2. No

DK, RF

XAAD_Q12C

(Because of your condition, do you use:) a scooter?

  1. Yes
  2. No

DK, RF

XAAD_Q12D

(Because of your condition, do you use:) a manual wheelchair?

  1. Yes
  2. No

DK, RF

XAAD_Q12E

(Because of your condition, do you use:) a motorized wheelchair?

  1. Yes
  2. No

DK, RF

XAAD_Q12F

(Because of your condition, do you use:) orthopaedic footwear?

  1. Yes
  2. No

DK, RF

XAAD_Q12G

(Because of your condition, do you use:) an orthotic or brace?

  1. Yes
  2. No

DK, RF

XAAD_Q12H

(Because of your condition, do you use:) a prosthetic device or artificial limb?

  1. Yes
  2. No

DK, RF

XAAD_Q12I

(Because of your condition, do you use:) a grasping tool or reach extender?

  1. Yes
  2. No

DK, RF

XAAD_Q12J

(Because of your condition, do you use:) adapted tools, utensils or special grips?

  1. Yes
  2. No

DK, RF

XAAD_Q12K

Because of your condition, do you use: a device with oversized buttons, such as a remote control or telephone?

  1. Yes
  2. No

DK, RF

XAAD_Q12L

(Because of your condition, do you use:) a device for dressing, such as a button hook, zipper pull, or long-handled shoe horn?

  1. Yes
  2. No

DK, RF

XAAD_Q12M

(Do you use:) a cell phone or smart phone with specialized features to help with your condition?

  1. Yes
  2. No

DK, RF

XAAD_Q12N

(Do you use:) a personal computer or laptop with specialized software or other adaptations to help with your condition?

  1. Yes
  2. No

DK, RF

XAAD_Q13A

Does your personal computer or laptop have: speech to text, text to speech or voice recognition software to help with your condition?

  1. Yes
  2. No

DK, RF

XAAD_Q13B

Does your personal computer or laptop have: a specialized keyboard or trackball to help with your condition?

  1. Yes
  2. No

DK, RF

XAAD_Q13C

(Does your personal computer or laptop have:) a head mouse or Jouse to help with your condition?

  1. Yes
  2. No

DK, RF

XAAD_Q13D

(Does your personal computer or laptop have:) other software or adaptation to help with your condition?

  1. Yes
  2. No

DK, RF

XAAD_R14

The next questions ask about aids, assistive devices and accessibility features you may have at your residence to help with moving around, to help with bending or reaching or to help with fine motor skills.

XAAD_Q14A

Because of your condition, at your residence, do you have: bathroom aids such as a raised toilet seat or grab bars?

  1. Yes
  2. No

DK, RF

XAAD_Q14B

(Because of your condition, at your residence, do you have:) a walk-in bath or shower?

  1. Yes
  2. No

DK, RF

XAAD_Q14C

(Because of your condition, at your residence, do you have:) an access ramp or a ground-level entrance?

  1. Yes
  2. No

DK, RF

XAAD_Q14D

(Because of your condition, at your residence, do you have:) widened doorways or hallways?

  1. Yes
  2. No

DK, RF

XAAD_Q14E

Because of your condition, at your residence, do you have: a lift device or elevator?

  1. Yes
  2. No

DK, RF

XAAD_Q14F

(Because of your condition, at your residence, do you have:) automatic or easy to open doors, including lever handles?

  1. Yes
  2. No

DK, RF

XAAD_Q14G

(Because of your condition, at your residence, do you have:) lowered counters in the kitchen or bathroom?

  1. Yes
  2. No

DK, RF

XAAD_Q15

Do you use any other aid, assistive device or accessibility feature for moving around, to help with bending or reaching or to help with fine motor skills?

  1. Yes
  2. No

DK, RF

XAAD_S15

What is this?

DK, RF

XAAD_Q16

Are there any aids or assistive devices for moving around, to help with bending or reaching, or to help with fine motor skills that you think you need, but do not have?

  1. Yes
  2. No

DK, RF

XAAD_Q17

Which aids or assistive devices do you need, but do not have?

  1. Cane, walking stick or crutches
  2. Walker
  3. Scooter
  4. Manual wheelchair
  5. Motorized wheelchair
  6. Orthopaedic footwear
  7. Orthotic or brace
  8. Prosthetic device or artificial limb
  9. Grasping tool or reach extender
  10. Adapted tools, utensils or special grips
  11. Device with oversized buttons, such as a remote control or telephone
  12. Device for dressing ( e.g. button hook, zipper pull, long-handled shoe horn)
  13. Cell phone or smart phone with specialized features
  14. Personal computer or laptop with specialized software or other adaptations
  15. Speech to text, text to speech or voice recognition software
  16. Specialized keyboard or trackball
  17. Head mouse or Jouse
  18. Bathroom aids ( e.g. raised toilet seat or grab bars)
  19. Walk-in bath or shower
  20. Access ramp or a ground-level entrance
  21. Widened doorways or hallways
  22. Lift device or elevator
  23. Automatic or easy to open doors
  24. Lowered counters in kitchen or bathroom
  25. Other – Specify

DK, RF

XAAD_S17

(Which aids or assistive devices do you need, but do not have?)

DK, RF

XAAD_Q18

Why do you not have (refers to XAAD_Q17 response(s))?

  1. Cost (too expensive to purchase)
  2. Not covered by insurance
  3. Not able or willing to upgrade from current aid/device
  4. Don’t know how/where to get aid/device
  5. Not available locally
  6. On a waiting list
  7. Available aids cannot be adapted for respondent’s situation
  8. No reason stated

DK, RF

XAAD_R19

Now some questions about aids and assistive devices that you may use to help with learning difficulties.

XAAD_Q19A

Do you use: recording equipment or a portable note-taking device to help with learning difficulties?

  1. Yes
  2. No

DK, RF

XAAD_Q19B

Do you use: a device for playing audio books or e-books to help with learning difficulties?

  1. Yes
  2. No

DK, RF

XAAD_Q19C

(Because of your condition, do you use:) a portable spell checker, not including a cell phone?

  1. Yes
  2. No

DK, RF

XAAD_Q19D

(Because of your condition, do you use:) a personal digital assistant (PDA), not including a cell phone?

  1. Yes
  2. No

DK, RF

XAAD_Q19E

(Do you use:) a cell phone or smart phone with specialized features to help with learning difficulties?

  1. Yes
  2. No

DK, RF

XAAD_Q19F

(Do you use:) a personal computer or laptop with specialized software or other adaptations to help with learning difficulties?

  1. Yes
  2. No

DK, RF

XAAD_Q20A

Does your personal computer or laptop have: speech to text, text to speech or voice recognition software to help with learning difficulties?

  1. Yes
  2. No

DK, RF

XAAD_Q20B

Does your personal computer or laptop have: a scanner to help with learning difficulties?

  1. Yes
  2. No

DK, RF

XAAD_Q20C

Does your personal computer or laptop have: graphic organizational tools or mind-mapping tools to help with learning difficulties?

  1. Yes
  2. No

DK, RF

XAAD_Q20D

(Does your personal computer or laptop have:) other software or adaptation to help with learning difficulties?

  1. Yes
  2. No

DK, RF

XAAD_Q21

Do you use any other aid or assistive device to help with learning difficulties?

  1. Yes
  2. No

DK, RF

XAAD_S21

What is this?

DK, RF

XAAD_Q22

Are there any aids or assistive devices for learning that you think you need, but do not have?

  1. Yes
  2. No

DK, RF

XAAD_Q23

Which aids or devices do you need, but do not have?

  1. Recording equipment or portable note-taking device
  2. Device for playing audio books or e-books
  3. Portable spell checker, not including cell phone
  4. Personal digital assistant (PDA), not including a cell phone
  5. Cell phone/smart phone with specialized features
  6. Personal computer or laptop with specialized software or other adaptations
  7. Speech to text, text to speech or voice recognition software
  8. Scanner
  9. Graphic organizational tools or mind-mapping tools
  10. Other – Specify

DK, RF

XAAD_S23

(Which aids or devices do you need, but do not have?)

DK, RF

XAAD_Q24

Why do you not have (refers to XAAD_Q23 response(s))?

  1. Cost (too expensive to purchase)
  2. Not covered by insurance
  3. Not able or willing to upgrade from current aid/device
  4. Don’t know how/where to get aid/device
  5. Not available locally
  6. On a waiting list
  7. Available aids cannot be adapted for respondent’s situation
  8. No reason stated

DK, RF

XAAD_R25

[Now, I would like you to think about all other aids, devices and specialized equipment you use for your condition(s).] You may feel that some of these questions do not apply to you or may seem similar to questions already asked, but it is important that we ask the same questions of everyone.

Please do not include medication taken for your condition(s), as we will be asking about this in a later section.

XAAD_Q25A

Because of your condition(s), do you use: orthopaedic footwear?

  1. Yes
  2. No

DK, RF

XAAD_Q25B

Because of your condition(s), do you use: an orthotic or brace?

  1. Yes
  2. No

DK, RF

XAAD_Q25C

Because of your condition(s), do you use: supportive devices, such as therapeutic cushions or pillows, special chairs or an adjustable bed?

  1. Yes
  2. No

DK, RF

XAAD_Q25D

(Because of your condition(s), do you use:) an electrotherapy device for pain, such as a TENS machine?

  1. Yes
  2. No

DK, RF

XAAD_Q25E

Because of your condition(s), do you use: a voice amplifier?

  1. Yes
  2. No

DK, RF

XAAD_Q25F

(Because of your condition(s), do you use:) diabetic aids, such as a blood glucose monitor or needles?

  1. Yes
  2. No

DK, RF

XAAD_Q25G

(Because of your condition(s), do you use:) oxygen supplies?

  1. Yes
  2. No

DK, RF

XAAD_Q25H

(Because of your condition(s), do you use:) ostomy supplies?

  1. Yes
  2. No

DK, RF

XAAD_Q25I

(Because of your condition(s), do you use:) any other aid or device?

  1. Yes
  2. No

DK, RF

XAAD_S25I

What is this?

DK, RF

XAAD_Q26

Are there any aids, devices or specialized equipment that you think you need but do not have?

  1. Yes
  2. No

DK, RF

XAAD_Q27

Which aids, devices or specialized equipment do you need, but do not have?

  1. Orthopaedic footwear
  2. Orthotic or brace
  3. Supportive devices, such as therapeutic cushions or pillows, special chairs or an adjustable bed
  4. Electrotherapy device for pain, such as a TENS machine
  5. Voice amplifier
  6. Diabetic aids, such as a blood glucose monitor or needles
  7. Oxygen supplies
  8. Ostomy supplies
  9. Other – Specify
  10. None

DK, RF

XAAD_S27

(Which aids, devices or specialized equipment do you need, but do not have?)

DK, RF

XAAD_Q28

Why do you not have (refers to XAAD_Q27 response(s))?

  1. Cost (too expensive to purchase)
  2. Not covered by insurance
  3. Not able or willing to upgrade from current aid/device
  4. Don’t know how/where to get aid/device
  5. Not available locally
  6. On a waiting list
  7. Available aids cannot be adapted for respondent’s situation
  8. No reason stated

DK, RF

XAAD_Q29

Thinking about all the aids, assistive devices and specialized equipment you use for your condition(s), in the past 12 months, did you have any out-of-pocket or direct expenses for the purchase, repair or maintenance of these aids?

Please exclude amounts for which you have been or will be reimbursed.

  1. Yes
  2. No

DK, RF

XAAD_Q30

How much did you have to pay out-of-pocket in the past 12 months for aids, devices and specialized equipment?

  1. Less than $100
  2. $100 to less than $200
  3. $200 to less than $500
  4. $500 to less than $1,000
  5. $1,000 to less than $2,000
  6. $2,000 to less than $5,000
  7. $5,000 or more

DK, RF

Medication Use (XMDD)

XMDD_R01

The next questions are about your use of prescription medications taken for your condition.

XMDD_Q01

Because of your condition, do you take any prescription medications at least once a week?

  1. Yes
  2. No

DK, RF

XMDD_Q02

In the past 12 months, were you ever unable to get prescription medications you were supposed to take because of the cost?

  1. Yes
  2. No

DK, RF

XMDD_Q03

In the past twelve months, did you ever take prescription medication less often than you were supposed to, because of the cost?

  1. Yes
  2. No

DK, RF

Help Received for Everyday Activities (XHRE)

XHRE_R01

Now, some questions on help you may receive with everyday activities because of your condition. Include help received from family, friends, neighbours, and from organizations, whether paid or unpaid.

XHRE_Q01

Because of your condition, do you usually receive help preparing meals?

  1. Yes
  2. No

DK, RF

XHRE_Q02

Do you need additional help preparing meals?

  1. Yes
  2. No

DK, RF

XHRE_Q03

Do you think you need help preparing meals?

  1. Yes
  2. No

DK, RF

XHRE_Q04

Because of your condition, do you usually receive help with everyday housework, such as dusting and tidying up?

  1. Yes
  2. No

DK, RF

XHRE_Q05

Do you need additional help with everyday housework?

  1. Yes
  2. No

DK, RF

XHRE_Q06

Do you think you need help with everyday housework?

  1. Yes
  2. No

DK, RF

XHRE_Q07

Because of your condition, do you usually receive help with heavy household chores, such as yard work, snow removal or spring cleaning?

  1. Yes
  2. No

DK, RF

XHRE_Q08

Do you need additional help with heavy household chores?

  1. Yes
  2. No

DK, RF

XHRE_Q09

Do you think you need help with heavy household chores?

  1. Yes
  2. No

DK, RF

XHRE_Q10

Because of your condition, do you usually receive help with getting to appointments and running errands, such as shopping for groceries?

  1. Yes
  2. No

DK, RF

XHRE_Q11

Do you need additional help with getting to appointments and running errands?

  1. Yes
  2. No

DK, RF

XHRE_Q12

Do you think you need help with getting to appointments and running errands?

  1. Yes
  2. No

DK, RF

XHRE_Q13

Because of your condition, do you usually receive help with looking after your personal finances, such as making bank transactions or paying bills?

  1. Yes
  2. No

DK, RF

XHRE_Q14

Do you need additional help with looking after your personal finances?

  1. Yes
  2. No

DK, RF

XHRE_Q15

Do you think you need help with looking after your personal finances?

  1. Yes
  2. No

DK, RF

XHRE_Q16

Because of your condition, do you usually receive help with personal care, such as washing, dressing or taking medication?

  1. Yes
  2. No

DK, RF

XHRE_Q17

Do you need additional help with personal care?

  1. Yes
  2. No

DK, RF

XHRE_Q18

Do you think you need help with personal care?

  1. Yes
  2. No

DK, RF

XHRE_Q19A

Because of your condition, do you usually receive basic medical care at home?

  1. Yes
  2. No

DK, RF

XHRE_Q19B

From whom do you usually receive basic medical care at home?

  1. Family member living with you
  2. Family member not living with you
  3. Friend or neighbour
  4. Organization or individual you pay
  5. Organization or individual you do not pay
  6. Other

DK, RF

XHRE_Q20

Do you need additional basic medical care at home?

  1. Yes
  2. No

DK, RF

XHRE_Q21

Do you think you need basic medical care at home?

  1. Yes
  2. No

DK, RF

XHRE_Q22

Because of your condition, do you usually receive help with moving around inside your residence?

  1. Yes
  2. No

DK, RF

XHRE_Q23

Do you need additional help with moving around inside your residence?

  1. Yes
  2. No

DK, RF

XHRE_Q24

Do you think you need help with moving around inside your residence?

  1. Yes
  2. No

DK, RF

XHRE_Q25

Because of your condition, do you usually receive help with childcare?

  1. Yes
  2. No
  3. Not applicable

DK, RF

XHRE_Q26

Do you need additional help with childcare?

  1. Yes
  2. No

DK, RF

XHRE_Q27

Do you think you need help with childcare?

  1. Yes
  2. No

DK, RF

XHRE_Q28

Now, I would like you to think about all the help you receive with everyday activities because of your condition. How often do you usually receive help? Is it… ?

  1. Daily
  2. At least once a week
  3. At least once a month
  4. Less than once a month

DK, RF

XHRE_Q29

Thinking of all the help you receive, who helps you with your everyday activities?

  1. Family member living with you
  2. Family member not living with you
  3. Friend or neighbour
  4. Organization or individual you pay
  5. Organization or individual you do not pay
  6. Other

DK, RF

XHRE_Q30

Of those who help you with your everyday activities, who provides the most help?

  1. Family member living with you
  2. Family member not living with you
  3. Friend or neighbour
  4. Organization or individual you pay
  5. Organization or individual you do not pay
  6. Other

DK, RF

XHRE_Q31

Thinking about all the help you receive with your everyday activities because of your condition, in the past 12 months, did you have any out-of-pocket or direct expenses for help received?

Please exclude amounts for which you have been or will be reimbursed.

  1. Yes
  2. No

DK, RF

XHRE_Q32

How much did you have to pay out-of-pocket in the past 12 months for the help you received?

Please exclude amounts for which you have been or will be reimbursed

  1. Less than $500
  2. $500 to less than $1,000
  3. $1,000 to less than $2,000
  4. $2,000 to less than $5,000
  5. $5,000 to less than $7,500
  6. $7,500 to less than $10,000
  7. $10,000 or more

DK, RF

Education (XEDU)

XEDU_R01

The next few questions are on education.

XEDU_Q01

Are you currently attending school, college, CEGEP or university?

  1. Yes
  2. No

DK, RF

XEDU_Q02

Did you attend school, college, CEGEP or university at any time since September 2011?

  1. Yes
  2. No

DK, RF

XEDU_Q03

What type of educational institution [are you attending/did you attend]?

  1. Elementary, junior high school or high school
  2. Trade school, college, CEGEP or other non-university institution
  3. University

DK, RF

XEDU_Q04

[Are/Were] you enrolled as... ?

  1. a full-time student
  2. a part-time student
  3. both full-time and part-time student

DK, RF

XEDU_Q05

[Are/Were] you studying part-time because of your condition?

  1. Yes
  2. No

DK, RF

XEDU_Q06

Because of your condition, [do/did] you require adapted or modified building features to attend school?

  1. Yes
  2. No

DK, RF

XEDU_Q07

[Do/Did] you require... ?

  1. accessible classrooms
  2. adapted washrooms
  3. accessible residences
  4. accessible buildings, excluding residences
  5. other feature
  6. none of the above

DK, RF

XEDU_S07

([Do/Did] you require...? other feature)

DK, RF

XEDU_Q08

[Are/Is/Were/Was] (refers to XEDU_Q07 response(s)) available to you?

  1. Yes
  2. No

DK, RF

XEDU_Q09

[Do/Did] you require specialized transportation to attend school?

  1. Yes
  2. No

DK, RF

XEDU_Q10

[Is/Was] specialized transportation available to you?

  1. Yes
  2. No

DK, RF

XEDU_Q11

[Do/Did] you need any assistive devices, support services, modification to curriculum or additional time for testing to follow your courses?

  1. Yes
  2. No

      DK, RF

XEDU_Q12

[Do/Did] you need...?

  1. recording equipment or a portable note-taking device
  2. a computer or laptop with specialized software or other adaptations to help with your condition
  3. a device for playing audio books or e-books
  4. magnifiers
  5. CCTV ’s (Closed circuit television readers)
  6. large print reading materials
  7. Braille reading materials or manual brailler
  8. a cell phone or smart phone with specialized features to help with your condition
  9. a teacher’s aide or tutor
  10. a sign language interpreter
  11. attendant care services
  12. a modified or adapted course curriculum
  13. extended time to take tests and exams
  14. other aid or service
  15. none of the above

DK, RF

XEDU_S12

([Do/Did] you need...? other aid or service)

DK, RF

XEDU_Q13

[Are/Is/Were/Was] (refers to XEDU_Q12 response(s)) made available to you?

  1. Yes
  2. No

      DK, RF

Past School Attendance (XEDP)

XEDP_Q01

Did you attend school, college, CEGEP or university at any time since September 2007?

  1. Yes
  2. No

      DK, RF

XEDP_Q02

Did you have your condition when you were attending school (in the past 5 years)?

  1. Yes
  2. No

      DK, RF

XEDP_Q03

Because of your condition, did you require adapted or modified building features to attend school?

  1. Yes
  2. No

      DK, RF

XEDP_Q04

Did you require... ?

  1. accessible classrooms
  2. adapted washrooms
  3. accessible residences
  4. accessible buildings, excluding residences
  5. other feature
  6. none of the above

DK, RF

XEDP_S04

(Did you require...? other feature)

DK, RF

XEDP_Q05

[Were/Was] (refers to XEDP_Q04 response(s)) available to you?

  1. Yes
  2. No

      DK, RF

XEDP_Q06

Did you require specialized transportation to attend school?

  1. Yes
  2. No

      DK, RF

XEDP_Q07

Was specialized transportation available to you?

  1. Yes
  2. No

      DK, RF

XEDP_Q08

Did you need any assistive devices, support services, modification to curriculum or additional time for testing to follow your courses?

  1. Yes
  2. No

      DK, RF

XEDP_Q09

Did you need...?

  1. recording equipment or a portable note-taking device
  2. a computer or laptop with specialized software or other adaptations to help with your condition
  3. a device for playing audio books or e-books
  4. magnifiers
  5. CCTV ’s (Closed circuit television readers)
  6. large print reading materials
  7. Braille reading materials or manual brailler
  8. a cell phone or smart phone with specialized features to help with your condition
  9. a teacher’s aide or tutor
  10. a sign language interpreter
  11. attendant care services
  12. a modified or adapted course curriculum
  13. extended time to take tests and exams
  14. other aid or service
  15. none of the above

DK, RF

XEDP_S09

(Did you need...? other aid or service)

DK, RF

XEDP_Q10

[Were/Was] (refers to XEDP_Q09 response(s)) made available to you?

  1. Yes
  2. No

      DK, RF

Educational Experiences (XEEX)

XEEX_R01

Now, think of the time when you completed all your education or training.

XEEX_Q01

Did you have your condition before completing all your formal education or training?

  1. Yes
  2. No
  3. Not applicable

      DK, RF

XEEX_Q02

[Have you ever discontinued/Did you discontinue] your formal education or training because of your condition?

  1. Yes
  2. No

      DK, RF

XEEX_Q03A

Because of your condition: did you begin school later than most other people your age?

  1. Yes
  2. No

      DK, RF

XEEX_Q03B

(Because of your condition:) did you ever change your course of studies?

  1. Yes
  2. No

      DK, RF

XEEX_Q03C

(Because of your condition:) was your choice of courses or careers influenced?

  1. Yes
  2. No

      DK, RF

XEEX_Q03D

(Because of your condition:) did you take fewer courses or subjects than you otherwise would have?

  1. Yes
  2. No

      DK, RF

XEEX_Q03E

Because of your condition: did you take any courses by correspondence or home study?

  1. Yes
  2. No

      DK, RF

XEEX_Q03F

Because of your condition: did you ever change schools?

  1. Yes
  2. No

      DK, RF

XEEX_Q03G

Because of your condition: did you have to leave your community to attend school?

  1. Yes
  2. No

      DK, RF

XEEX_Q03H

(Because of your condition:) did you ever attend a special education school or special education classes in a regular school?

  1. Yes
  2. No

      DK, RF

XEEX_Q03I

(Because of your condition:) was your education interrupted for long periods of time?

  1. Yes
  2. No

      DK, RF

XEEX_Q03J

Because of your condition: did you ever go back to school for retraining?

  1. Yes
  2. No

      DK, RF

XEEX_Q03K

(Because of your condition:) did you have any additional expenses for your schooling?

  1. Yes
  2. No

      DK, RF

XEEX_Q03L

(Because of your condition:) did it take you longer to achieve your present level of education?

  1. Yes
  2. No

      DK, RF

XEEX_Q04

How much longer?

_ _ Years
DK, RF

XEEX_R05

Now some questions about your experience at school.

XEEX_Q05

Because of your condition: did some people avoid you or did you feel left out of things at school?

  1. Yes
  2. No

      DK, RF

XEEX_Q06

Because of your condition: did you experience bullying at school?

  1. Yes
  2. No

      DK, RF

Educational Background (XEDB)

XEDB_Q01

What is the highest certificate, diploma or degree that you have completed?

  1. Less than high school diploma or its equivalent
  2. High school diploma or a high school equivalency certificate
  3. Trade certificate or diploma
  4. College, CEGEP or other non-university certificate or diploma (other than trades certificates or diplomas)
  5. University certificate or diploma below the bachelor's level
  6. Bachelor's degree ( e.g. B.A. , B.Sc. , LL.B. )
  7. University certificate, diploma or degree above the bachelor's level

DK, RF

XEDB_Q02

In what year did you complete your highest certificate, diploma or degree?

_ _ _ _ Year
DK, RF

XEDB_Q03

In what country was the institution that granted your highest certificate, diploma or degree located?

  1. Canada
  2. Outside Canada

DK, RF

XEDB_Q04

In what province or territory?

  1. Newfoundland and Labrador
  2. Prince Edward Island
  3. Nova Scotia
  4. New Brunswick
  5. Quebec
  6. Ontario
  7. Manitoba
  8. Saskatchewan
  9. Alberta
  10. British Columbia
  11. Yukon
  12. Northwest Territories
  13. Nunavut

DK, RF

XEDB_Q05

What was the major field of study of the highest certificate, diploma or degree you completed?
(Specify - Major field of study or area of specialization)

DK, RF

Labour Force Status (XLFS)

XLFS_R01

The next few questions will help us establish your employment status.

XLFS_Q01

Last week, did you work at a job or business? (regardless of the number of hours)

  1. Yes
  2. No
  3. Completely prevented from working

DK, RF

XLFS_Q02

Last week, did you have a job or business from which you were absent?

  1. Yes
  2. No

DK, RF

XLFS_Q03

What was the main reason you were absent from work last week?

  1. Temporary layoff from a job or business to which you expect to return
  2. On vacation, sick leave, on strike or locked out
  3. Caring for own children
  4. Caring for a (adult) family member
  5. Maternity or parental leave
  6. Injury or health condition (no longer paid by employer)
  7. Other reasons-still has a job
  8. Other reasons-does not have a job (includes seasonal layoffs)

DK, RF

XLFS_Q04

Last week, did you have definite arrangements to start a new job within the next four weeks?

  1. Yes
  2. No

DK, RF

XLFS_Q05

Did you look for work during the past four weeks?  (For example, did you contact an employment centre, check with employers or search internet job sites, etc.)

  1. Yes, looked for full-time work
  2. Yes, looked for part-time work (less than 30 hours per week)
  3. No

DK, RF

XLFS_Q06

Could you have started a job last week had one been available?

  1. Yes, could have started a job
  2. No, already had a job
  3. No, because of temporary illness
  4. No, because of disability
  5. No, because of personal or family responsibilities
  6. No, going to school
  7. No, retired
  8. No, other reasons

DK, RF

Employment Details (XEDE)

XEDE_Q01

How many hours do you usually work per week?

_ _ _ Hours
DK, RF

XEDE_Q02

What is the main reason you usually work less than 30 hours per week?

  1. Temporary illness
  2. Disability or health condition
  3. Caring for own children
  4. Caring for a (adult) family member
  5. Other personal or family responsibilities
  6. Going to school
  7. Economic conditions
  8. Could not find work with 30 or more hours per week
  9. Job is part-time/ contract, more hours not available
  10. Don’t want to work more than 30 hours
  11. Other

DK, RF

XEDE_S02

(What is the main reason you usually work less than 30 hours per week?)

DK, RF

XEDE_Q03A

On what date did you start this job?

_ _ Day
DK, RF

XEDE_Q03B

On what date did you start this job?

_ _ Month
DK, RF

XEDE_Q03C

On what date did you start this job?

_ _ _ _ Year
DK, RF

XEDE_Q04

Are you an employee or self-employed?

  1. Employee
  2. Self-employed
  3. Working in a family business without pay

DK, RF

XEDE_Q05

What is the name of your business?

DK, RF

XEDE_Q06

For whom do you work?

DK, RF

XEDE_Q07

What kind of business, industry or service is this?

DK, RF

XEDE_Q08

What is your work or occupation?

DK, RF

XEDE_Q09

In this work, what are your main activities?

DK, RF

XEDE_Q10

In this job, are you a union member or covered by a union contract or collective agreement?

  1. Yes
  2. No

DK, RF

XEDE_Q11

About how many persons are employed at the location where you now work?

  1. Less than 20
  2. 20 to 99
  3. 100 to 500
  4. Over 500

DK, RF

XEDE_Q12

Is your job a permanent job?

  1. Yes
  2. No

DK, RF

XEDE_Q13

In what way is your job not permanent?

  1. It is seasonal
  2. Temporary, term or contract (non-seasonal)
  3. Casual job
  4. Work done through a temporary help agency
  5. Student
  6. Apprenticeship, internship or articling position
  7. Other – Specify

DK, RF

XEDE_S13

(In what way is your job not permanent?)

(DK, RF not allowed)

XEDE_Q14

Because of your condition, have you ever:

  1. changed the kind of work you do?
  2. changed the amount of work you do?
  3. changed your job?
  4. began telework or working from home?
  5. None selected

     DK, RF

XEDE_Q15

Does your condition limit the amount or kind of work you can do at your present job or business?

  1. Yes
  2. No

DK, RF

XEDE_Q16

Where were you employed when you first experienced work limitations?

  1. Present employer
  2. Elsewhere
  3. Not working

DK, RF

XEDE_Q17

Are you now doing the same kind of work as you were doing at the time you first experienced work limitations?

  1. Yes
  2. No

DK, RF

XEDE_Q18

Is your condition the reason you are now doing a different kind of work?

  1. Yes
  2. No

DK, RF

XEDE_Q19

Do you believe that your condition makes it difficult for you to change jobs or to advance at your present job?

  1. Yes, very difficult
  2. Yes, difficult
  3. No, not difficult

DK, RF

XEDE_Q20

Why do you believe that your condition makes it difficult for you to change jobs or advance at your present job?

  1. Discrimination or stigma because of condition
  2. Condition limits number of hours that can be worked
  3. Condition limits ability to search for a job
  4. Cannot obtain required supports or accommodations
  5. Adapting to a new work environment would be difficult
  6. Other
  7. None selected

DK, RF

XEDE_Q21

Is your employer aware of your work limitation?

  1. Yes
  2. No

DK, RF

Unemployed People (XUDE)

XUDE_Q01

When did you last work, even for a few days? Include as work, working without pay at a family farm or business. Do not include volunteer work, housework, maintenance or repairs for your own home.

_ _ _ _ Year
DK, RF

XUDE_Q02

When you last worked, how many hours did you usually work per week?

_ _ _ Hours
DK, RF

XUDE_Q03

Were you an employee or self-employed?

  1. Employee
  2. Self-employed
  3. Working in a family business without pay

DK, RF

XUDE_Q04

What was the name of your business?

DK, RF

XUDE_Q05

For whom did you work?

DK, RF

XUDE_Q06

What kind of business, industry or service was this?

DK, RF

XUDE_Q07

What was your work or occupation?

DK, RF

XUDE_Q08

In this work, what were your main activities?

DK, RF

XUDE_Q09

Have you had any periods of employment in the last twelve months; that is to say, periods when you had a job?

  1. Yes
  2. No

DK, RF

XUDE_Q10

How many different periods of employment did you have?

  1. One
  2. Two
  3. Three or more

DK, RF

XUDE_Q11

What was the length of the longest period of employment?

  1. Under three months
  2. Three to five months
  3. Six months or more

DK, RF

XUDE_Q12

Does your condition limit the amount or kind of work you can do at a job or business?

  1. Yes
  2. No

DK, RF

XUDE_Q13

Were you working at a job or business at the time you became limited in the kind or amount of work you can do?

  1. Yes
  2. No

DK, RF

XUDE_Q14

Does your condition affect your ability to look for work?

  1. Yes
  2. No

DK, RF

XUDE_Q15

Because of your condition, are you limited in your ability to:

  1. work at a full-time job?
  2. work at a part-time job?
  3. None of the above

DK, RF

XUDE_Q16

Was your previous employer aware of your activity limitation?

  1. Yes
  2. No

DK, RF

Not in Labour Force (XNDE)

XNDE_Q01

When did you last work, even for a few days? Include as work, working without pay at a family farm or business. Do not include volunteer work, housework, maintenance or repairs for your own home.

_ _ _ _ Year
DK, RF

XNDE_Q02

Are you permanently retired?

  1. Yes
  2. No

DK, RF

XNDE_Q03A

Is that because of your condition?

  1. Yes, completely
  2. Yes, partially
  3. No

DK, RF

XNDE_Q03B

Did you retire from a job or business or did you stop looking for work?

  1. Retired from job or business
  2. Stopped looking for work

DK, RF

XNDE_Q04

When you last worked, how many hours did you usually work per week?

_ _ _ Hours
DK, RF

XNDE_Q05

Were you an employee or self-employed?

  1. Employee
  2. Self-employed
  3. Working in a family business without pay

DK, RF

XNDE_Q06

What was the name of your business?

DK, RF

XNDE_Q07

For whom did you work?

DK, RF

XNDE_Q08

What kind of business, industry or service was this?

DK, RF

XNDE_Q09

What was your work or occupation?

DK, RF

XNDE_Q10

In this work, what were your main activities?

DK, RF

XNDE_11

Does your condition completely prevent you from working at a job or business?

  1. Yes
  2. No

DK, RF

XNDE_Q12

Is there some type of workplace arrangement or modification that would enable you to work at a paid job or business, such as modified or different duties or technical aids?

  1. Yes
  2. No

DK, RF

XNDE_Q13

Does your condition limit the amount or kind of work you could do at a job or business?

  1. Yes
  2. No

DK, RF

XNDE_Q14A

Were you working at a job or business at the time you became limited in the amount or kind of work you can do?

  1. Yes
  2. No

DK, RF

XNDE_Q14B

Were you working at a job or business at the time you became completely unable to work?

  1. Yes
  2. No

DK, RF

XNDE_Q15

Does your condition affect your ability to look for work?

  1. Yes
  2. No

DK, RF

XNDE_Q16

Have you looked for work in the past two years?

  1. Yes
  2. No

DK, RF

XNDE_Q17

Some people have encountered barriers which have discouraged them from looking for work. Please think about your own experience and indicate which of the following situations apply to you.

  1. Your expected employment income would be less than your current income
  2. You would lose additional supports such as drug plan or housing
  3. Lack of specialized transportation
  4. Your family responsibilities prevent you from working
  5. Your past attempts to find work have been unsuccessful
  6. Your family or friends discourage you from working
  7. You have experienced discrimination in the past
  8. You feel your training or experience is not adequate for the current job market
  9. There are few jobs available in your local area
  10. You experienced accessibility issues when applying for work
  11. Other reason
  12. None selected

DK, RF

XNDE_Q18

Do you think that you will look for work at any time in the next twelve months?

  1. Yes
  2. No

DK, RF

XNDE_Q19

Is this because...?

  1. You expect your condition to improve
  2. There will be changes or improvements in the workplace
  3. You will be taking training
  4. Another reason
  5. None selected

DK, RF

XNDE_Q20

Was your previous employer aware of your activity limitation?

  1. Yes
  2. No

DK, RF

Retirement (XRET)

XRET_Q01

When did you retire for the first time?

_ _ _ _ Year
DK, RF

XRET_Q02

When you last worked, how many hours did you usually work per week?

_ _ _ Hours
DK, RF

XRET_Q03

Was this retirement voluntary?

  1. Yes
  2. No

DK, RF

XRET_Q04

Does your condition completely prevent you from working?

  1. Yes
  2. No

DK, RF

XRET_Q05

Does your condition limit the amount or kind of work you could do?

  1. Yes
  2. No

DK, RF

XRET_Q06

Some people have encountered barriers which have discouraged them from looking for work. Could you think about your own situation and indicate which of the following situations might apply to you?

  1. Your expected employment income would be less than your current income
  2. You would lose additional supports such as drug plan or housing
  3. Lack of specialized transportation
  4. Your family responsibilities prevent you from working
  5. Your past attempts to find work have been unsuccessful
  6. Your family or friends discourage you from working
  7. You have experienced discrimination in the past
  8. You feel your training or experience is not adequate for the current job market
  9. There are few jobs available in your local area
  10. You experienced accessibility issues when applying for work
  11. Other reason
  12. None selected

DK, RF

Workplace Training (XETR)

XETR_R01

[The next few questions deal with job-related training paid for or provided by your employer or company./The next few questions deal with job-related training paid for or provided by your most recent employer or company.]

XETR_Q01A

In the past twelve months, have you received any classroom training related to your job?

  1. Yes
  2. No

DK, RF

XETR_Q01B

During the last twelve months of your previous employment, did you receive any classroom training related to your job?

  1. Yes
  2. No

DK, RF

XETR_Q02

In the past twelve months, have you received any on-the-job training?

  1. Yes
  2. No

DK, RF

XETR_Q03

In the last twelve months of your previous employment, did you receive any on-the-job training?

  1. Yes
  2. No

DK, RF

XETR_Q04

In the past twelve months, did you participate in any work-related training that was not paid for or provided by an employer?

  1. Yes
  2. No

DK, RF

XETR_Q05

Who paid for this training?

  1. You paid for it yourself
  2. Provided by government program
  3. Provided by non-profit organization or other agency for free
  4. Other

DK, RF

XETR_Q06

In the past twelve months, did you want to take some work-related training courses?

  1. Yes
  2. No

DK, RF

XETR_Q07

Did any of the following prevent you from taking work-related training courses?

  1. Location was not physically accessible to you
  2. Courses were not adapted to the needs of your condition
  3. You requested courses, but were denied them (by employer)
  4. Your condition
  5. Inadequate transportation
  6. Too costly
  7. Too busy
  8. Other reason
  9. None selected

DK, RF

Employment Modifications (XEMO)

XEMO_Q01A

Because of your condition, do you require any of the following to be able to work?

  1. Job redesign (modified or different duties)
  2. Telework
  3. Modified hours or days or reduced work hours
  4. Human support, such as a reader, Sign language interpreter, jobcoach or personal assistant
  5. Technical aids, such as a voice synthesizer, a TTY , an infrared system or portable note-taker
  6. A computer or laptop with specialized software or other adaptations such as Braille, screen magnification software, voice recognition software or a scanner
  7. Communication aids, such as Braille or large print reading material or recording equipment
  8. A modified or ergonomic workstation
  9. A special chair/ back support
  10. Handrails, ramps or widened doorways or hallways
  11. Adapted or accessible parking
  12. An accessible elevator
  13. Adapted washrooms
  14. Specialized transportation
  15. Other equipment, help or work arrangement
  16. None of the above

DK, RF

XEMO_S01A

(Because of your condition, do you require any of the following to be able to work? Other equipment, help or work arrangement)

DK, RF

XEMO_Q01B

Because of your condition, would you require any of the following to be able to work?

  1. Job redesign (modified or different duties)
  2. Telework
  3. Modified hours or days or reduced work hours
  4. Human support, such as a reader, Sign language interpreter, jobcoach or personal assistant
  5. Technical aids, such as a voice synthesizer, a TTY , an infrared system or portable note-taker
  6. A computer or laptop with specialized software or other adaptations such as Braille, screen magnification software, voice recognition software or a scanner
  7. Communication aids, such as Braille or large print reading material or recording equipment
  8. A modified or ergonomic workstation
  9. A special chair/ back support
  10. Handrails, ramps or widened doorways or hallways
  11. Adapted or accessible parking
  12. Accessible elevator
  13. Adapted washrooms
  14. Specialized transportation
  15. Other equipment, help or work arrangement
  16. None of the above

DK, RF

XEMO_S01B

(Because of your condition, would you require any of the following to be able to work? Other equipment, help or work arrangement)

DK, RF

XEMO_Q02

[Have/Has] (refers to XEMO_Q01A or XEMO_Q01B response(s)) been made available to you?

  1. Yes
  2. No

DK, RF

XEMO_Q03

Did you ask your employer for the work place accommodation[s] that [have/has] not been made available to you?

  1. Yes
  2. No

DK, RF

XEMO_Q04

Why have you not received the workplace accommodation[s] that you need?

  1. Too expensive (purchase or maintenance)
  2. Employer or supervisor refused request
  3. On a waiting list
  4. Not available locally
  5. Other

DK, RF

XEMO_Q05

Is your employer aware that you need the workplace accommodation[s]?

  1. Yes
  2. No

DK, RF

XEMO_Q06

Why have you not asked for the workplace accommodation[s] that you need?

  1. Uncomfortable asking
  2. Do not want to cause difficulty for my employer
  3. Don’t think my employer could afford or find proper accommodations
  4. Do not want to disclose that I have a disability or need accommodations
  5. Concerned about reaction of co-workers
  6. Fear of negative outcomes
  7. Condition is not severe enough
  8. Lack of awareness or understanding by employer with respect to accommodation requests
  9. Other

DK, RF

XEMO_Q07

Did you ask your previous employer for the work place accommodation[s] that [have/has] not been made available to you?

  1. Yes
  2. No

DK, RF

XEMO_Q08

Why did you not receive the workplace accommodation[s] that you needed?

  1. Too expensive (purchase or maintenance)
  2. Employer or supervisor refused request
  3. On a waiting list
  4. Not available locally
  5. Other

DK, RF

XEMO_Q09

Is your previous employer aware that you needed the workplace accommodation[s]?

  1. Yes
  2. No

DK, RF

XEMO_Q10

Why did you not ask for the workplace accommodation[s] that you needed?

  1. Uncomfortable asking
  2. Do not want to cause difficulty for my employer
  3. Don’t think my employer could afford or find proper accommodations
  4. Do not want to disclose that I have a disability or need accommodations
  5. Concerned about reaction of co-workers
  6. Fear of negative outcomes
  7. Condition is not severe enough
  8. Lack of awareness or understanding by employer with respect to accommodation requests
  9. Other

DK, RF

Labour Force Discrimination (XEDI)

XEDI_Q01

In the past five years, do you believe that because of your condition, you have been: refused a job interview?

  1. Yes
  2. No

DK, RF

XEDI_Q02

(In the past five years, do you believe that because of your condition, you have been:) refused a job?

  1. Yes
  2. No

DK, RF

XEDI_Q03

(In the past five years, do you believe that because of your condition, you have been:) refused a job promotion?

  1. Yes
  2. No

DK, RF

XEDI_Q04

Do you consider yourself to be disadvantaged in employment because of your condition?

  1. Yes
  2. No

DK, RF

XEDI_Q05

Do you believe that your current employer or any potential employer would be likely to consider you disadvantaged in employment because of your condition?

  1. Yes
  2. No

DK, RF

Getting Around the Community (XDRV)

XDRV_R01

The next questions are about getting around the city or local community.

XDRV_Q01

Do you regularly use public transit, such as a public bus, subway, Sky Train, metro, street car, or light rail transit?

  1. Yes
  2. No

DK, RF

XDRV_Q02

Is regular public transit available in your city or local community?

  1. Yes
  2. No

DK, RF

XDRV_Q03

Do you regularly use specialized transit service, such as a special bus, van or subsidized accessible taxi service?

  1. Yes
  2. No

DK, RF

XDRV_Q04

Is specialized transit service available in your city or local community?

  1. Yes
  2. No

DK, RF

XDRV_Q05

Because of your condition, do you experience any difficulty using public transit or specialized transit service?

  1. No difficulty
  2. Some difficulty
  3. A lot of difficulty

DK, RF

XDRV_Q06

What are the reasons you have difficulty using public transit or specialized transit service?

  1. Service is not available when you need it
  2. Booking rules don’t allow for last minute arrangements
  3. Difficulty getting to or locating bus stops
  4. Difficulty getting on or off the vehicle
  5. Difficulty seeing signs or notices, stops or hearing announcements
  6. Overcrowding
  7. Difficulty requesting service
  8. Difficulty interpreting schedules
  9. Difficulty transferring or completing complicated transfers
  10. Your condition or health problem is aggravated when you go out
  11. Too expensive
  12. Other reason

DK, RF

Source of Income (XSNC)

XSNC_R01

The next questions are about personal income sources.

You may feel that some of these questions do not apply to you, but it is important that we ask the same questions of everyone.

XSNC_Q01A

In 2011, did you receive income from the following sources: Wages and salaries?

  1. Yes
  2. No

DK, RF

XSNC_Q01B

(In 2011, did you receive income from the following sources:) Income from self-employment?

  1. Yes
  2. No

DK, RF

XSNC_Q01C

(In 2011, did you receive income from the following sources:) Workers’ Compensation?

  1. Yes
  2. No

DK, RF

XSNC_Q01D

(In 2011, did you receive income from the following sources:) Canada Pension Plan Disability Benefit?

  1. Yes
  2. No

DK, RF

XSNC_Q01E

(In 2011, did you receive income from the following sources:) Quebec Pension Plan Disability Benefit?

  1. Yes
  2. No

DK, RF

XSNC_Q01F

In 2011, did you receive income from the following sources: Benefits from Canada Pension Plan excluding disability benefits?

  1. Yes
  2. No

DK, RF

XSNC_Q01G

(In 2011, did you receive income from the following sources:) Benefits from Quebec Pension Plan excluding disability benefits?

  1. Yes
  2. No

DK, RF

XSNC_Q01H

(In 2011, did you receive income from the following sources:) Long Term Disability (private plan)?

  1. Yes
  2. No

DK, RF

XSNC_Q01I

(In 2011, did you receive income from the following sources:) Motor Vehicle Accident Insurance Disability Benefit?

  1. Yes
  2. No

DK, RF

XSNC_Q01J

(In 2011, did you receive income from the following sources:) Veterans Affairs disability pension benefit?

  1. Yes
  2. No

DK, RF

XSNC_Q01K

(In 2011, did you receive income from the following sources:) Provincial, Territorial or Municipal Social Assistance or Welfare?

  1. Yes
  2. No

DK, RF

XSNC_Q01L

In 2011, did you receive income from the following sources: Employment insurance (or Quebec Parental Insurance Plan)?

  1. Yes
  2. No

DK, RF

XSNC_Q02

Was this for short term disability (sickness benefit)?

  1. Yes
  2. No

DK, RF

Record Linkage (XRLL)

XRLL_R01

In order to reduce the number of questions in this interview, Statistics Canada may add information from other surveys or administrative data sources such as tax and pension systems to the responses you provided today.

Please make any corrections to the address label here:

Name of institution

Office to which questionnaire should be directed

Name and title of principal contact

Street address

City, Province

Postal code

Office to which inquiries on tuition should be directed (if different from above)
Telephone

Office to which inquiries on living accommodation costs should be directed (if different from above)
Telephone

Report completed by: (Reporting Officer)

  • Date
  • Telephone
  • Fax
  • E-mail

Information for Respondents

Authority
Collected under the authority of the Statistics Act, Revised Statutes of Canada 1985, Chapter S19.

Mandatory Surveys
“This survey is conducted under the authority of the Statistics Act. Completion of this questionnaire is a legal requirement under the Statistics Act.”

Confidentiality Statement
Statistics Canada is prohibited by law from publishing any statistics which would divulge information obtained from this survey that relates to any identifiable business, institution or individual without the previous written consent of that business, institution or individual.

Survey Objective
This survey is designed to obtain information about tuition and living accommodation costs at Canadian universities. The information will be published by Statistics Canada and used to calculate the Consumer Price Index.

Correspondence
If you require assistance in the completion of this questionnaire or have any questions regarding the survey, please call us at (613) 951-4311, (613) 951-1761 or fax your query to 613-951-1333.

General Instructions

Please refer to TLAC survey respondent guide for complete instructions.

Note:  Whenever possible, final fees and living accommodation costs should be reported. If they have not yet been determined your best estimate should be reported. If applicable, please check the box showing that these are estimated fees for 2012-2013.

Statistics Canada Use Only: InstitutionCode

8-2200-267.1:  2010-03-09  STC/ECT-170-60244

Tuition and living accommodation costs for full-time students at Canadian degree granting institutions
For Academic Years 2012-2013 and 2012-2013

Part A: Tuition fees for full-time students

Upon which basis will you report Undergraduate tuition fees? (please check one)

  • Academic year (8 months)    
  • Semester (4 months)   
  • Per credit
  • Other, please specify   

Please report 2012-2013 tuition fees charged to full time students in undergraduate programs offered by your institution (Where necessary, make revisions to last year’s data included in the attached tables in the “2011-2012 Actual Tuition Fees” space provided.)

Table 1
Undergraduate programs 2012-2013 Actual Tuition Fees Actual (or Estimated) 2011-2012 Actual Tuition Fees
Canadian students Foreign students Canadian students Foreign students
Lower Upper  Lower Upper  Lower Upper  Lower Upper 
Education                
Visual and Performing Arts, and Communications Technologies                
Humanities                
Social and Behavioural Sciences                
Law                
Business, Management and Public Administration                
Physical and Life Sciences and Technologies                
Mathematics, Computer and Information Sciences                
Engineering                
Architecture and Related Technologies                
Agriculture, Natural Resources and Conservation                
Dentistry                
Medicine                
Nursing                
Pharmacy                
Veterinary medicine                
Other Health, Parks, Recreation and Fitness                
Personal, Protective and Transportation services                
Other                

Comments:

Part A: Tuition fees for full-time students

Upon which basis will you report Graduate tuition fees? (please check one)

  • Academic year (8 months)
  • Semester (4 months)
  • Per credit
  • Full year (12 months)
  • Other, please specify

Please report 2012-2013 tuition fees charged to full time students in graduate programs offered by your institution (Where necessary, make revisions to last year’s data included in the attached tables in the “2011-2012 Actual Tuition Fees” space provided.)

Table 2
Graduate programs  2012-2013 Actual Tuition Fees (or Estimated) 2011-2012 Actual Tuition Fees
Canadian students Foreign students Canadian students Foreign students
Lower Upper  Lower Upper  Lower Upper  Lower Upper 
Education                
Visual and Performing Arts, and Communications Technologies                
Humanities                
Social and Behavioural Sciences                
Law                
Executive MBA                
Regular MBA                
Business, Management and Public Administration                
Physical and Life Sciences and Technologies                
Mathematics, Computer and Information Sciences                
Engineering                
Architecture and Related Technologies                
Agriculture, Natural Resources and Conservation                
Dentistry                
Medicine                
Nursing                
Pharmacy                
Veterinary medicine                
Other Health, Parks, Recreation and Fitness                
Personal, Protective and Transportation services                
Other                

Comments:

Part B: Additional compulsory fees for full-time undergraduate Canadian Students

Do not include foreign student fees; make note in “Comments” section instead

Upon which basis will you report additional compulsory fees? (Please check one)

  • Academic year (8 months)   
  • Semester (4 months)  
  • Other, please specify     

Please report 2012-2013 additional compulsory fees charged to full time Canadian students in undergraduate programs offered by your institution (Where necessary, make revisions to last year’s data included in the attached tables in the “2011-2012 Additional Compulsory Fees Actual” space provided.)

Table 3
Undergraduate programs 2012-2013 Actual Additional Compulsory Fees (or Estimated) 2011-2012 Actual Additional Compulsory Fees
Compulsory Fees Compulsory Fees
Athletics  Health Services  Student Association  Other please specify1 Total  Athletics  Health Services Student Association Other please specify1 Total 
Please report compulsory fees for all full-time Undergraduate students where these fees do not vary according to their field of study                    
Please report below compulsory fees for full-time Undergraduate students, where these fees do vary according to the field of study
Education                    
Visual and Performing Arts, and Communications Technologies                    
Humanities                    
Social and Behavioural Sciences                    
Law                    
Business, Management and Public Administration                    
Physical and Life Sciences and Technologies                    
Mathematics, Computer and Information Sciences                    
Engineering                    
Architecture and Related Technologies                    
Agriculture, Natural Resources and Conservation                    
Dentistry                    
Medicine                    
Nursing                    
Pharmacy                    
Veterinary medicine                    
Other Health, Parks, Recreation and Fitness                    
Personal, Protective and Transportation services                    
Other                    

Comments: (Please enter additional clarifications where necessary. Please also refer to Survey respondent guide):
1. If fees are reported in “Other please specify” please provide further details, in the space below, on the type of fee reported.  Please also indicate if the level of this tuition fee is determined by the institution's administration (e.g., a department of the institution, the finance department or others) or by other groups independently of the institution (e.g., a group that is not influenced or directed by the university administration).

Part B: Additional compulsory fees for full-time graduate Canadian Students

Do not include foreign student fees; make note in “Comments” section instead

Upon which basis will you report additional compulsory fees? (Please check one)

  • Academic year (8 months)
  • Semester (4 months)  
  • Other, please specify     

Please report 2012-2013 additional compulsory fees charged to full-time Canadian students in graduate programs offered by your institution (Where necessary make revisions to last year’s data included in the attached tables in the “2011-2012 Additional Compulsory Fees Actual” space provided.)

Table 4
Graduate programs  2012-2013 Actual Additional Compulsory Fees (or Estimated) 2011-2012 Actual Additional Compulsory
Fees
Compulsory Fees Compulsory Fees
Athletics  Health Services  Student Association  Other please specify1 Total  Athletics  Health Services Student Association Other please specify1 Total 
Please report compulsory fees for all full-time graduate students where these fees do not vary according to their field of study                    
Please report below compulsory fees for full-time graduate students, where these fees do vary according to the field of study
Education                    
Visual and Performing Arts, and Communications Technologies                    
Humanities                    
Social and Behavioural Sciences                    
Law                    
Executive MBA                    
Regular MBA                    
Business, Management and Public Administration
(other than MBA programs)
                   
Physical and Life Sciences and Technologies                    
Mathematics, Computer and Information Sciences                    
Engineering                    
Architecture and Related Technologies                    
Agriculture, Natural Resources and Conservation                    
Dentistry                    
Medicine                    
Nursing                    
Pharmacy                    
Veterinary medicine                    
Other Health, Parks, Recreation and Fitness                    
Personal, Protective and Transportation services                    
Other                    

Comments:  (Please enter additional clarifications where necessary. Please also refer to Survey respondent guide):
1. If fees are reported in “Other please specify” please provide further details, in the space below, on the type of fee reported.  Please also indicate if the level of this tuition fee is determined by the institution's administration (e.g., a department of the institution, the finance department or others) or by other groups independently of the institution (e.g., a group that is not influenced or directed by the university administration).

Part C: Living accommodation costs at residences/housing

Upon which basis will you report residence/housing costs for single students? (Please check one)

  • Academic year (8 months)
  • Semester (4 months)    
  • Month    
  • Week
  • Day  

Please report 2012-2013 fees charged to single students.

(Where necessary, make revisions to last year's data included in the attached tables in the "2011-2012 Accommodation Fees Actual" space provided.)

Table 5
  2012-2013 Actual Accommodation Fees (or Estimated) 2011-2012 Actual Accommodation Fees
Lower Upper Lower Upper
Room only        
Meal plan only        
Room and meal plan package        

Upon which basis will you report residence/housing costs for married students?

(Please check one)

  • Academic year (8 months)
  • Semester (4 months)
  • Month
  • Week
  • Day

Please report 2012-2013 fees charged to married students.

(Where necessary, make revisions to last year's data included in the attached tables in the "2011-2012 Accommodation Fees Actual" space provided.)

Table 6
  2012-2013 Actual Accommodation Fees
(or Estimated)
2011-2012 Actual Accommodation Fees
Lower Upper Lower Upper
Room        

Comments: (Please refer to General Instructions)

Authorization to Release Data

I hereby give permission to the Chief Statistician of Canada to authorise the release of individual tuition and living accommodation cost data relating to this organization that has been provided to the survey on Tuition and Living Accommodation Costs for Full-time Students at Canadian Degree Granting Institutions for Academic Year 2012-2013.

Signature:

Name: (Please print)

Title:

Institution:

Date:

Please return the completed questionnaire and the authorization to release data form to:

Stephane Mazerall
Operations and Integration Division
Statistics Canada
Jean-Talon Building, 2nd floor, B-17
Tunney’s Pasture
Ottawa ON K1A 0T6
Tel: (613) 951-1094
Fax: (613) 951-0709