AI RESEARCH

Amortized Filtering and Smoothing with Conditional Normalizing Flows

arXiv CS.LG

ArXi:2604.07169v1 Announce Type: cross Bayesian filtering and smoothing for high-dimensional nonlinear dynamical systems are fundamental yet challenging problems in many areas of science and engineering. In this work, we propose AFSF, a unified amortized framework for filtering and smoothing with conditional normalizing flows. The core idea is to encode each observation history into a fixed-dimensional summary statistic and use this shared representation to learn both a forward flow for the filtering distribution and a backward flow for the backward transition kernel.