Affiliation:
1. Universityof Twente, The Netherlands
2. Tilburg University, The Netherlands
Abstract
Person-fit analysis revolves around fitting an item response theory (IRT) model to respondents’ vectors of item scores on a test and drawing statistical inferences about fit or misfit of these vectors. Four person-fit measures were studied in order-restricted latent class models (OR-LCMs). To decide whether the OR-LCM fits an item score vector, a Bayesian framework was adopted and posterior predictive checks were used. First, simulated Type I error rates and detection rates were investigated for the four person-fit measures under varying test and item characteristics. Second, the suitability of the OR-LCM methodology in a nonparametric IRT context was investigated. The result was Type I error rates close to the nominal Type I error rates and detection rates close to the detection rates found in OR-LCMs. This means that the OR-LCM methodology is a suitable alternative for assessing person fit in nonparametric IRT models.
Subject
Psychology (miscellaneous),Social Sciences (miscellaneous)
Reference44 articles.
1. Berkhof, J., van Mechelen, I. & Hoijtink, H. (2001). Posterior predictive checks: Principles and discussion . Computational Statistics, 15, 337-354 .
2. Effect of Dissimulation Motivation and Anxiety on Response Pattern Appropriateness Measures
3. Birenbaum, M. & Nassar, F. (1994). On the relationship between test anxiety and test performance . Measurement and Evaluation in Counseling and Development, 27, 293-301 .
4. Outlier Measures and Norming Methods for Computerized Adaptive Tests
5. Coefficient alpha and the internal structure of tests
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