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Autores principales: Li, Ke, Han, Wei, Wang, Yuexi, Yang, Yun
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2504.08214
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author Li, Ke
Han, Wei
Wang, Yuexi
Yang, Yun
author_facet Li, Ke
Han, Wei
Wang, Yuexi
Yang, Yun
contents We investigate the problem of sampling from posterior distributions with intractable normalizing constants in Bayesian inference. Our solution is a new generative modeling approach based on optimal transport (OT) that learns a deterministic map from a reference distribution to the target posterior through constrained optimization. The method uses structural constraints from OT theory to ensure uniqueness of the solution and allows efficient generation of many independent, high-quality posterior samples. The framework supports both continuous and mixed discrete-continuous parameter spaces, with specific adaptations for latent variable models and near-Gaussian posteriors. Beyond computational benefits, it also enables new inferential tools based on OT-derived multivariate ranks and quantiles for Bayesian exploratory analysis and visualization. We demonstrate the effectiveness of our approach through multiple simulation studies and a real-world data analysis.
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publishDate 2025
record_format arxiv
spellingShingle An Optimal Transport-Based Generative Model for Bayesian Posterior Sampling
Li, Ke
Han, Wei
Wang, Yuexi
Yang, Yun
Computation
Methodology
We investigate the problem of sampling from posterior distributions with intractable normalizing constants in Bayesian inference. Our solution is a new generative modeling approach based on optimal transport (OT) that learns a deterministic map from a reference distribution to the target posterior through constrained optimization. The method uses structural constraints from OT theory to ensure uniqueness of the solution and allows efficient generation of many independent, high-quality posterior samples. The framework supports both continuous and mixed discrete-continuous parameter spaces, with specific adaptations for latent variable models and near-Gaussian posteriors. Beyond computational benefits, it also enables new inferential tools based on OT-derived multivariate ranks and quantiles for Bayesian exploratory analysis and visualization. We demonstrate the effectiveness of our approach through multiple simulation studies and a real-world data analysis.
title An Optimal Transport-Based Generative Model for Bayesian Posterior Sampling
topic Computation
Methodology
url https://arxiv.org/abs/2504.08214