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Neural Bayesian Filtering

4 October 2025
Christopher Solinas
Radovan Haluška
David Sychrovský
Finbarr Timbers
Nolan Bard
M. Buro
Martin Schmid
Nathan R Sturtevant
Michael Bowling
    BDL
ArXiv (abs)PDFHTML
Main:9 Pages
9 Figures
Bibliography:3 Pages
9 Tables
Appendix:8 Pages
Abstract

We present Neural Bayesian Filtering (NBF), an algorithm for maintaining distributions over hidden states, called beliefs, in partially observable systems. NBF is trained to find a good latent representation of the beliefs induced by a task. It maps beliefs to fixed-length embedding vectors, which condition generative models for sampling. During filtering, particle-style updates compute posteriors in this embedding space using incoming observations and the environment's dynamics. NBF combines the computational efficiency of classical filters with the expressiveness of deep generative models - tracking rapidly shifting, multimodal beliefs while mitigating the risk of particle impoverishment. We validate NBF in state estimation tasks in three partially observable environments.

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