Abstract

AbstractThis study proposed Gibbs sampling algorithms for variable selection in a latent regression model under a unidimensional two‐parameter logistic item response theory model. Three types of shrinkage priors were employed to obtain shrinkage estimates: double‐exponential (i.e., Laplace), horseshoe, and horseshoe+ priors. These shrinkage priors were compared to a uniform prior case in both simulation and real data analysis. The simulation study revealed that two types of horseshoe priors had a smaller root mean square errors and shorter 95% credible interval lengths than double‐exponential or uniform priors. In addition, the horseshoe+ prior was slightly more stable than the horseshoe prior. The real data example successfully proved the utility of horseshoe and horseshoe+ priors in selecting effective predictive covariates for math achievement.

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