Recursive Nested Filtering for Efficient Amortized Bayesian Experimental Design
Machine Learning
2024-12-02 v2 Machine Learning
Methodology
Abstract
This paper introduces the Inside-Out Nested Particle Filter (IO-NPF), a novel, fully recursive, algorithm for amortized sequential Bayesian experimental design in the non-exchangeable setting. We frame policy optimization as maximum likelihood estimation in a non-Markovian state-space model, achieving (at most) computational complexity in the number of experiments. We provide theoretical convergence guarantees and introduce a backward sampling algorithm to reduce trajectory degeneracy. IO-NPF offers a practical, extensible, and provably consistent approach to sequential Bayesian experimental design, demonstrating improved efficiency over existing methods.
Keywords
Cite
@article{arxiv.2409.05354,
title = {Recursive Nested Filtering for Efficient Amortized Bayesian Experimental Design},
author = {Sahel Iqbal and Hany Abdulsamad and Sara Pérez-Vieites and Simo Särkkä and Adrien Corenflos},
journal= {arXiv preprint arXiv:2409.05354},
year = {2024}
}
Comments
Accepted to NeurIPS BDU Workshop 2024