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We developed an empirical Bayes (EB) enhancement to Mantel‐Haenszel (MH) DIF analysis in which we assume that the MH statistics are normally distributed and that the prior distribution of underlying DIF parameters is also normal. We use the posterior distribution of DIF parameters to make inferences about the item's true DIF status and the posterior predictive distribution to predict the item's future observed status. DIF status is expressed in terms of the probabilities associated with each of the five DIF levels defined by the ETS classification system: C–, B–, A, B+, and C+. The EB methods yield more stable DIF estimates than do conventional methods, especially in small samples, which is advantageous in computer‐adaptive testing. The EB approach may also convey information about DIF stability in a more useful way by representing the state of knowledge about an item's DIF status as probabilistic.
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Rebecca Zwick
Dorothy T. Thayer
Charles Lewis
Journal of Educational Measurement
University of California, Berkeley
University of California, Santa Barbara
Berkeley College
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Zwick et al. (Mon,) studied this question.
www.synapsesocial.com/papers/69d94dbac7f0c3ae80a3cc2b — DOI: https://doi.org/10.1111/j.1745-3984.1999.tb00543.x