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Adaptive sequential Monte Carlo for automated cross validation in structural Bayesian hierarchical models

Authors :
Han, Geonhee
Gelman, Andrew
Publication Year :
2025

Abstract

Importance sampling (IS) is widely used for approximate Bayesian cross validation (CV) due to its efficiency, requiring only the re-weighting of a single set of posterior draws. With structural Bayesian hierarchical models, vanilla IS can produce unreliable results, as out-of-sample replication may involve non-standard case-deletion schemes which significantly alter the posterior geometry. This inevitably necessitates computationally expensive re-runs of Markov chain Monte Carlo (MCMC), making structural CV impracticable. To address this challenge, we consider sampling from a sequence of posteriors leading to the case-deleted posterior(s) via adaptive sequential Monte Carlo (SMC). We design the sampler to (a) support a broad range of structural CV schemes, (b) enhance efficiency by adaptively selecting Markov kernels, intervening in parallelizable MCMC re-runs only when necessary, and (c) streamline the workflow by automating the design of intermediate bridging distributions. Its practical utility is demonstrated through three real-world applications involving three types of predictive model assessments: leave-group-out CV, group $K$-fold CV, and sequential one-step-ahead validation.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.07685
Document Type :
Working Paper