Accounting for Non‐ignorable Sampling and Non‐response in Statistical Matching

Summary Data for statistical analysis is often available from different samples, with each sample containing measurements on only some of the variables of interest. Statistical matching attempts to generate a fused database containing matched measurements on all the target variables. In this article...

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Bibliographic Details
Published inInternational statistical review Vol. 91; no. 2; pp. 269 - 293
Main Authors Marella, Daniela, Pfeffermann, Danny
Format Journal Article
LanguageEnglish
Published Hoboken John Wiley & Sons, Inc 01.08.2023
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Summary:Summary Data for statistical analysis is often available from different samples, with each sample containing measurements on only some of the variables of interest. Statistical matching attempts to generate a fused database containing matched measurements on all the target variables. In this article, we consider the use of statistical matching when the samples are drawn by informative sampling designs and are subject to not missing at random non‐response. The problem with ignoring the sampling process and non‐response is that the distribution of the data observed for the responding units can be very different from the distribution holding for the population data, which may distort the inference process and result in a matched database that misrepresents the joint distribution in the population. Our proposed methodology employs the empirical likelihood approach and is shown to perform well in a simulation experiment and when applied to real sample data.
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ISSN:0306-7734
1751-5823
DOI:10.1111/insr.12524