Variational Bayesian inference for sparse item response theory models
Yemao Xia et al.
Abstract
Item response theory (IRT) model is a widely appreciated statistical method in exploring the relationship between individual latent traits and item responses. In this paper, a sparse IRT model is established to address the sparsity of factor loadings. A global and local shrinkage prior is imposed to penalize the factor loadings: the global parameter controls the amount of shrinkage at the column levels, while the local parameter adjusts the penalty of factor loadings within each column. We develop a variational Bayesian procedure to conduct posterior inference. By exploiting a stochastic representation for logistic function, we frame sparse IRT model as a mixture model mixing with Pólya-Gamma distribution. Such a strategy admits a conjugate posterior for the latent quantity, thus leading to a straightforward posterior computation. We assess the performance of the proposed method via a simulation study. A real example related to personality assessment is analysed to illustrate the usefulness of methodology.
Evidence weight
Balanced mode · F 0.40 / M 0.15 / V 0.05 / R 0.40
| F · citation impact | 0.50 × 0.4 = 0.20 |
| M · momentum | 0.50 × 0.15 = 0.07 |
| V · venue signal | 0.50 × 0.05 = 0.03 |
| R · text relevance † | 0.50 × 0.4 = 0.20 |
† Text relevance is estimated at 0.50 on the detail page — for your query’s actual relevance score, open this paper from a search result.