Backward Filtering Forward Guiding
By: Frank van der Meulen, Moritz Schauer, Stefan Sommer
Potential Business Impact:
Helps track hidden paths in complex systems.
We develop a general methodological framework for probabilistic inference in discrete- and continuous-time stochastic processes evolving on directed acyclic graphs (DAGs). The process is observed only at the leaf nodes, and the challenge is to infer its full latent trajectory: a smoothing problem that arises in fields such as phylogenetics, epidemiology, and signal processing. Our approach combines a backward information filtering step, which constructs likelihood-informed potentials from observations, with a forward guiding step, where a tractable process is simulated under a change of measure constructed from these potentials. This Backward Filtering Forward Guiding (BFFG) scheme yields weighted samples from the posterior distribution over latent paths and is amenable to integration with MCMC and particle filtering methods. We demonstrate that BFFG applies to both discrete- and continuous-time models, enabling probabilistic inference in settings where standard transition densities are intractable or unavailable. Our framework opens avenues for incorporating structured stochastic dynamics into probabilistic programming. We numerically illustrate our approach for a branching diffusion process on a directed tree.
Similar Papers
Generative Bayesian Filtering and Parameter Learning
Methodology
Helps computers learn from messy, unclear data.
Flow-based Bayesian filtering for high-dimensional nonlinear stochastic dynamical systems
Numerical Analysis
Helps computers guess hidden things better and faster.
Feedback Guidance of Diffusion Models
CV and Pattern Recognition
Makes AI art better by fixing mistakes smartly.