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Evaluating the Quality of Survey and Administrative Data with Generalized Multitrait-Multimethod Models

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Version 3 2021-09-29, 13:51
Version 2 2018-01-26, 21:59
Version 1 2017-03-09, 19:57
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posted on 2021-09-29, 13:51 authored by D. L. Oberski, A. Kirchner, S. Eckman, F. Kreuter

Administrative data are increasingly important in statistics, but, like other types of data, may contain measurement errors. To prevent such errors from invalidating analyses of scientific interest, it is therefore essential to estimate the extent of measurement errors in administrative data. Currently, however, most approaches to evaluate such errors involve either prohibitively expensive audits or comparison with a survey that is assumed perfect. We introduce the “generalized multitrait-multimethod” (GMTMM) model, which can be seen as a general framework for evaluating the quality of administrative and survey data simultaneously. This framework allows both survey and administrative data to contain random and systematic measurement errors. Moreover, it accommodates common features of administrative data such as discreteness, nonlinearity, and nonnormality, improving similar existing models. The use of the GMTMM model is demonstrated by application to linked survey-administrative data from the German Federal Employment Agency on income from of employment, and a simulation study evaluates the estimates obtained and their robustness to model misspecification. Supplementary materials for this article are available online.

Funding

This work was supported by the Netherlands Organization for Scientific Research (NWO) (Veni grant number 451-14-017). This material is partly based upon work supported by the National Science Foundation under Grant No. SES-1132015. Any opinions, findings, and conclusions or recommendations expressed in this material are those of the authors and do not necessarily reflect the views of the National Science Foundation. Part of Frauke Kreuter's time was supported by the National Institute of Health [R01 MH099010-01A1 to Elizabeth Stuart].

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