AI RESEARCH

Training-Free Bayesian Filtering with Generative Emulators

arXiv CS.LG

ArXi:2605.20028v1 Announce Type: new Bayesian filtering is a well-known problem that aims to estimate plausible states of a dynamical system from observations. Among existing approaches to solve this problem, particle filters are theoretically exact for non-linear dynamics and observations, but suffer from poor scalability in high dimensions. In this work, we show that diffusion-based emulators of dynamical systems can be used to implement, without additional