Pathwise Learning of Stochastic Dynamical Systems with Partial Observations
arXiv stat.ML / 4/14/2026
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Key Points
- The paper addresses reconstructing stochastic dynamical systems from data when observations are noisy, nonlinear, and only partially observed, which makes both coefficient estimation and posterior filtering difficult.
- It proposes a “neural path estimation” framework using variational inference, deriving a stochastic control problem tied to a pathwise Zakai equation to represent the filtering posterior path measure.
- The method builds a generative model that transforms the prior path measure to the posterior via a controlled diffusion process and the associated Radon–Nikodym derivative.
- By amortizing over sample paths of the observation process, it learns the control from noisy observation paths and trains an associated SDE that induces the desired filtering path measure.
- Experiments on nonlinear stochastic systems indicate the approach can manage multimodal distributions, chaotic dynamics, and sparse observation data.
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