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Testing unidimensionality in polytomous Rasch models

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Abstract

A fundamental assumption of most IRT models is that items measure the same unidimensional latent construct. For the polytomous Rasch model two ways of testing this assumption against specific multidimensional alternatives are discussed. One, a marginal approach assuming a multidimensional parametric latent variable distribution, and, two, a conditional approach with no distributional assumptions about the latent variable. The second approach generalizes the Martin-Löf test for the dichotomous Rasch model in two ways: to polytomous items and to a test against an alternative that may have more than two dimensions. A study on occupational health is used to motivate and illustrate the methods.

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Correspondence to Karl Bang Christensen.

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The authors would like to thank Niels Keiding, Klaus Larsen and the anonymous reviewers for valuable comments to a previous version of this paper. This research was supported by a grant from the Danish Research Academy and by a general research grant from Quality Metric, Inc.

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Christensen, K.B., Bjorner, J.B., Kreiner, S. et al. Testing unidimensionality in polytomous Rasch models. Psychometrika 67, 563–574 (2002). https://doi.org/10.1007/BF02295131

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  • DOI: https://doi.org/10.1007/BF02295131

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