AI RESEARCH

Physics-informed neural particle flow for the Bayesian update step

arXiv CS.LG

ArXi:2602.23089v2 Announce Type: replace The Bayesian update step poses significant computational challenges in high-dimensional nonlinear estimation. While log-homotopy particle flow filters offer an alternative to stochastic sampling, existing formulations usually yield stiff differential equations. Conversely, existing deep learning approximations typically treat the update as a black-box task or rely on asymptotic relaxation, neglecting the exact geometric structure of the finite-horizon probability transport.