Learning stochastic multiscale models through normalizing flows
Anan Saha, Arnab Ganguly

TL;DR
This paper presents a data-driven method for learning stochastic multiscale models from single trajectories using normalizing flows to model invariant distributions and Bayesian inference for uncertainty quantification.
Contribution
It introduces a novel framework combining stochastic averaging, normalizing flows, and Bayesian inference to learn multiscale stochastic dynamics from limited data.
Findings
Successfully models multiscale stochastic systems from single observed paths.
Employs normalizing flows to approximate invariant distributions of fast processes.
Provides a scalable Bayesian approach for uncertainty quantification in learned models.
Abstract
Many systems in physics, engineering, and biology exhibit multiscale stochastic dynamics, where low-dimensional slow variables evolve under the influence of high-dimensional fast processes. In practice, observations are often limited to a single trajectory of the slow component, while the fast dynamics remain unobserved, making statistical learning challenging. Approaches based on partial differential equations (PDE), such as Fokker-Planck formulations, aim to characterize the evolution of probability densities, typically requiring dense space-time data or grid-based solvers. In contrast, we adopt a trajectory-based perspective and develop a data-driven framework for learning effective stochastic dynamics from a single observed path. We model the dynamics by coupled multiscale stochastic differential equations (SDEs) and first obtain a principled model reduction through stochastic…
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