JSM 2004 - Toronto

Abstract #301023

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Activity Number: 216
Type: Topic Contributed
Date/Time: Tuesday, August 10, 2004 : 10:30 AM to 12:20 PM
Sponsor: Social Statistics Section
Abstract - #301023
Title: Using Double Sampling to Correct Gross Flows for Misclassification Error: Moment-based Inference vs. Likelihood-based Inference
Author(s): Nikolaos Tzavidis*+
Companies: University of Southampton
Address: S3RI, Southampton, International, SO17 1BJ, United Kingdom
Keywords: measurement error ; missing data ; panel surveys ; EM algorithm ; re-interview surveys ; missing information principle
Abstract:

Longitudinal surveys provide a key source of information for analyzing dynamic phenomena. Typical examples of longitudinal data are gross flows between a finite number of states. Sample surveys are, however, affected by nonsampling errors. We investigate the use of double sampling for correcting discrete longitudinal data for misclassification error. In a double sampling context, we assume that along with the main measurement device, which is affected by misclassification error, we can use a secondary measurement device, which is free of error but more expensive to apply. Inference is based on combining information from both measurement devices. Traditional moment-based inference is reviewed and contrasted, under alternative double sampling schemes, with a proposed likelihood-based method that works by simultaneously modeling the true transition process and the measurement error process within the context of a missing data problem. Variance estimation, under both approaches, is discussed. Monte Carlo simulation experiments indicate that the proposed likelihood-based method offers significant gains in efficiency over the traditional moment-based method.


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