Testing distributional assumptions in CUB models for the analysis of rating data
Francesca Di Iorio,
Riccardo Lucchetti,
Rosaria Simone
Abstract:In this paper, we propose a portmanteau test for misspecification in combination of uniform and binomial (CUB) models for the analysis of ordered rating data. Specifically, the test we build belongs to the class of information matrix (IM) tests that are based on the information matrix equality. Monte Carlo evidence indicates that the test has excellent properties in finite samples in terms of actual size and power versus several alternatives. Differently from other tests of the IM family, finite-sample adjustm… Show more
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