Improving Person-Fit Assessment by Correcting the Ability Estimate and Its Reference Distribution |
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Authors: | Jimmy de la Torre Weiling Deng |
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Affiliation: | Rutgers, The State University of New Jersey; Educational Testing Service |
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Abstract: | The standardized log-likelihood of a response vector (lz) is a popular IRT-based person-fit test statistic for identifying model-misfitting response patterns. Traditional use of lz is overly conservative in detecting aberrance due to its incorrect assumption regarding its theoretical null distribution. This study proposes a method for improving the accuracy of person-fit analysis using lz which takes into account test unreliability when estimating the ability and constructs the distribution for each lz through resampling methods. The Type I error and power (or detection rate) of the proposed method were examined at different test lengths, ability levels, and nominal α levels along with other methods, and power to detect three types of aberrance—cheating, lack of motivation, and speeding—was considered. Results indicate that the proposed method is a viable and promising approach. It has Type I error rates close to the nominal value for most ability levels and reasonably good power. |
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