| Literature DB >> 33797016 |
Maxwell Hong1, Lizhen Lin2, Ying Cheng3.
Abstract
Person fit statistics are frequently used to detect aberrant behavior when assuming an item response model generated the data. A common statistic, [Formula: see text], has been shown in previous studies to perform well under a myriad of conditions. However, it is well-known that [Formula: see text] does not follow a standard normal distribution when using an estimated latent trait. As a result, corrections of [Formula: see text], called [Formula: see text], have been proposed in the literature for specific item response models. We propose a more general correction that is applicable to many types of data, namely survey or tests with multiple item types and underlying latent constructs, which subsumes previous work done by others. In addition, we provide corrections for multiple estimators of [Formula: see text], the latent trait, including MLE, MAP and WLE. We provide analytical derivations that justifies our proposed correction, as well as simulation studies to examine the performance of the proposed correction with finite test lengths. An applied example is also provided to demonstrate proof of concept. We conclude with recommendations for practitioners when the asymptotic correction works well under different conditions and also future directions.Keywords: Asymptotics; item response theory; mixed item type; multidimensional; outlier detection; person fit
Year: 2021 PMID: 33797016 DOI: 10.1007/s11336-021-09756-3
Source DB: PubMed Journal: Psychometrika ISSN: 0033-3123 Impact factor: 2.500