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Online Posterior Sampling with a Diffusion Prior

Authors :
Kveton, Branislav
Oreshkin, Boris
Park, Youngsuk
Deshmukh, Aniket
Song, Rui
Publication Year :
2024

Abstract

Posterior sampling in contextual bandits with a Gaussian prior can be implemented exactly or approximately using the Laplace approximation. The Gaussian prior is computationally efficient but it cannot describe complex distributions. In this work, we propose approximate posterior sampling algorithms for contextual bandits with a diffusion model prior. The key idea is to sample from a chain of approximate conditional posteriors, one for each stage of the reverse process, which are estimated in a closed form using the Laplace approximation. Our approximations are motivated by posterior sampling with a Gaussian prior, and inherit its simplicity and efficiency. They are asymptotically consistent and perform well empirically on a variety of contextual bandit problems.<br />Comment: Proceedings of the 38th Conference on Neural Information Processing Systems

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.03919
Document Type :
Working Paper