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arxiv: 1511.07178 · v1 · pith:ZTNNL5AOnew · submitted 2015-11-23 · 📊 stat.ME

Detection of Uniform and Non-Uniform Differential Item Functioning by Item Focussed Trees

classification 📊 stat.ME
keywords itemapproachlogisticmethodnon-uniformtreesuniformcovariates
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Detection of differential item functioning by use of the logistic modelling approach has a long tradition. One big advantage of the approach is that it can be used to investigate non-uniform DIF as well as uniform DIF. The classical approach allows to detect DIF by distinguishing between multiple groups. We propose an alternative method that is a combination of recursive partitioning methods (or trees) and logistic regression methodology to detect uniform and non-uniform DIF in a nonparametric way. The output of the method are trees that visualize in a simple way the structure of DIF in an item showing which variables are interacting in which way when generating DIF. In addition we consider a logistic regression method in which DIF can by induced by a vector of covariates, which may include categorical but also continuous covariates. The methods are investigated in simulation studies and illustrated by two applications.

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