Combining cohorts in longitudinal surveys

Warning View the most recent version.

Archived Content

Information identified as archived is provided for reference, research or recordkeeping purposes. It is not subject to the Government of Canada Web Standards and has not been altered or updated since it was archived. Please "contact us" to request a format other than those available.

Iván A. Carrillo and Alan F. Karr1

Abstract

A question that commonly arises in longitudinal surveys is the issue of how to combine differing cohorts of the survey. In this paper we present a novel method for combining different cohorts, and using all available data, in a longitudinal survey to estimate parameters of a semiparametric model, which relates the response variable to a set of covariates. The procedure builds upon the Weighted Generalized Estimation Equation method for handling missing waves in longitudinal studies. Our method is set up under a joint-randomization framework for estimation of model parameters, which takes into account the superpopulation model as well as the survey design randomization. We also propose a design-based, and a joint-randomization, variance estimation method. To illustrate the methodology we apply it to the Survey of Doctorate Recipients, conducted by the U.S. National Science Foundation.

Key Words

Superpopulation parameters; Joint-randomization inference; Replication variance estimation; Rotating panel surveys; Multi-cohort longitudinal surveys; Weighted Generalized Estimating Equations.

Table of content

1 Introduction

2 The SDR design

3 Methodology

4 Application to the SDR

5 Conclusions and future research

 

 

 

 

 

1Iván A. Carrillo and Alan F. Karr, National Institute of Statistical Sciences, 19 T.W. Alexander Drive, Research Triangle Park, NC 27709, U.S.A. E-mail: ivan@niss.org and karr@niss.org.

Date modified: