A Penalty Approach to Differential Item Functioning in Rasch Models

A new diagnostic tool for the identification of differential item functioning (DIF) is proposed. Classical approaches to DIF allow to consider only few subpopulations like ethnic groups when investigating if the solution of items depends on the membership to a subpopulation. We propose an explicit m...

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Veröffentlicht in:Psychometrika 2015-03, Vol.80 (1), p.21-43
Hauptverfasser: Tutz, Gerhard, Schauberger, Gunther
Format: Artikel
Sprache:eng
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Zusammenfassung:A new diagnostic tool for the identification of differential item functioning (DIF) is proposed. Classical approaches to DIF allow to consider only few subpopulations like ethnic groups when investigating if the solution of items depends on the membership to a subpopulation. We propose an explicit model for differential item functioning that includes a set of variables, containing metric as well as categorical components, as potential candidates for inducing DIF. The ability to include a set of covariates entails that the model contains a large number of parameters. Regularized estimators, in particular penalized maximum likelihood estimators, are used to solve the estimation problem and to identify the items that induce DIF. It is shown that the method is able to detect items with DIF. Simulations and two applications demonstrate the applicability of the method.
ISSN:0033-3123
1860-0980
DOI:10.1007/s11336-013-9377-6