A persona-induced latent variable model with LLM-generated priors enables scalable adaptive item selection with closed-form Bayesian updates for accurate user-specific predictions.
Biometrika , volume=
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A refinement procedure for LCA that collapses redundant response probability levels per item to produce sparse, interpretable models with consistent recovery of the sparse pattern.
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Adaptive Querying with AI Persona Priors
A persona-induced latent variable model with LLM-generated priors enables scalable adaptive item selection with closed-form Bayesian updates for accurate user-specific predictions.
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Sparse Latent Class Analysis: Post-Estimation Refinement via Item-level Pseudo-Likelihood
A refinement procedure for LCA that collapses redundant response probability levels per item to produce sparse, interpretable models with consistent recovery of the sparse pattern.