Sahel Iqbal, Hany Abdulsamad, Sara Pérez-Vieites, Simo Särkkä, Adrien Corenflos
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Recursive Nested Filtering for Efficient Amortized Bayesian Experimental Design
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) $\mathcal{O}(T^2)$ 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.