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LOO and WAIC as Model Selection Methods for Polytomous Items (1806.09996v1)

Published 26 Jun 2018 in stat.AP

Abstract: Watanabe-Akaike information criterion (WAIC; Watanabe, 2010) and leave-one-out cross validation (LOO) are two fully Bayesian model selection methods that have been shown to perform better than other traditional information-criterion based model selection methods such as AIC, BIC, and DIC in the context of dichotomous IRT model selection. In this paper, we investigated whether such superior performances of WAIC and LOO can be generalized to scenarios of polytomous IRT model selection. Specifically, we conducted a simulation study to compare the statistical power rates of WAIC and LOO with those of AIC, BIC, AICc, SABIC, and DIC in selecting the optimal model among a group of polytomous IRT ones. We also used a real data set to demonstrate the use of LOO and WAIC for polytomous IRT model selection. The findings suggest that while all seven methods have excellent statistical power (greater than 0.93) to identify the true polytomous IRT model, WAIC and LOO seem to have slightly lower statistical power than DIC, the performance of which is marginally inferior to those of the other four frequentist methods. Keywords: polytomous IRT, Bayesian, MCMC, model comparison.

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