The asymptotic posterior normality of the latent trait in an IRT model |
| |
Authors: | Hua-Hua Chang William Stout |
| |
Affiliation: | (1) Educational Testing Service, Rosedale Road, 08541 Princeton, NJ;(2) Department of Statistics, University of Illinois, 101 Illini Hall, 725 South Wright Street, 61820 Champaign, IL |
| |
Abstract: | ![]() It has long been part of the item response theory (IRT) folklore that under the usual empirical Bayes unidimensional IRT modeling approach, the posterior distribution of examinee ability given test response is approximately normal for a long test. Under very general and nonrestrictive nonparametric assumptions, we make this claim rigorous for a broad class of latent models.This research was partially supported by Office of Naval Research Cognitive and Neural Sciences Grant N0014-J-90-1940, 442-1548, National Science Foundation Mathematics Grant NSF-DMS-91-01436, and the National Center for Supercomputing Applications. We wish to thank Kumar Joag-dev and Zhiliang Ying for enlightening suggestions concerning the proof of the basic result.The authors wish to thank Kumar Joag-Dev, Brian Junker, Bert Green, Paul Holland, Robert Mislevy, and especially Zhiliang Ying for their useful comments and discussions. |
| |
Keywords: | item response theory empirical Bayes posterior distribution ability estimation confidence interval manifest probably Dutch Identity |
本文献已被 SpringerLink 等数据库收录! |
|