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arxiv: 2409.14585 · v3 · submitted 2024-09-22 · 🧮 math.NA · cs.NA· math.PR· stat.CO· stat.ML

A convergent scheme for the Bayesian filtering problem based on the Fokker--Planck equation and deep splitting

classification 🧮 math.NA cs.NAmath.PRstat.COstat.ML
keywords filteringschemeconvergenceequationfokker--plancknumericalalgorithmdeep
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A numerical scheme for approximating the nonlinear filtering density is introduced and its convergence rate is established, theoretically under a parabolic H\"{o}rmander condition, and empirically in numerical examples. In a prediction step, between the noisy and partial measurements at discrete times, the scheme approximates the Fokker--Planck equation with a deep splitting scheme, followed by an exact update through Bayes' formula. This results in a classical prediction-update filtering algorithm that operates online for new observation sequences post-training. The algorithm employs a sampling-based Feynman--Kac approach, designed to mitigate the curse of dimensionality. As a corollary we obtain the convergence rate for the approximation of the Fokker--Planck equation alone, disconnected from the filtering problem. The convergence analysis is complemented by a nonlinear $10$-dimensional numerical example demonstrating the robustness of the method.

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