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Bibliographic Details
Main Authors: Zeng, Sebastian, Petersson, Andreas, Bock, Wolfgang
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.11794
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author Zeng, Sebastian
Petersson, Andreas
Bock, Wolfgang
author_facet Zeng, Sebastian
Petersson, Andreas
Bock, Wolfgang
contents We study the problem of learning the law of linear stochastic partial differential equations (SPDEs) with additive Gaussian forcing from spatiotemporal observations. Most existing deep learning approaches either assume access to the driving noise or initial condition, or rely on deterministic surrogate models that fail to capture intrinsic stochasticity. We propose a structured latent-variable formulation that requires only observations of solution realizations and learns the underlying randomly forced dynamics. Our approach combines a spectral Galerkin projection with a truncated Wiener chaos expansion, yielding a principled separation between deterministic evolution and stochastic forcing. This reduces the infinite-dimensional SPDE to a finite system of parametrized ordinary differential equations governing latent temporal dynamics. The latent dynamics and stochastic forcing are jointly inferred through variational learning, allowing recovery of stochastic structure without explicit observation or simulation of noise during training. Empirical evaluation on synthetic data demonstrates state-of-the-art performance under comparable modeling assumptions across bounded and unbounded one-dimensional spatial domains.
format Preprint
id arxiv_https___arxiv_org_abs_2602_11794
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Latent-Variable Learning of SPDEs via Wiener Chaos
Zeng, Sebastian
Petersson, Andreas
Bock, Wolfgang
Machine Learning
We study the problem of learning the law of linear stochastic partial differential equations (SPDEs) with additive Gaussian forcing from spatiotemporal observations. Most existing deep learning approaches either assume access to the driving noise or initial condition, or rely on deterministic surrogate models that fail to capture intrinsic stochasticity. We propose a structured latent-variable formulation that requires only observations of solution realizations and learns the underlying randomly forced dynamics. Our approach combines a spectral Galerkin projection with a truncated Wiener chaos expansion, yielding a principled separation between deterministic evolution and stochastic forcing. This reduces the infinite-dimensional SPDE to a finite system of parametrized ordinary differential equations governing latent temporal dynamics. The latent dynamics and stochastic forcing are jointly inferred through variational learning, allowing recovery of stochastic structure without explicit observation or simulation of noise during training. Empirical evaluation on synthetic data demonstrates state-of-the-art performance under comparable modeling assumptions across bounded and unbounded one-dimensional spatial domains.
title Latent-Variable Learning of SPDEs via Wiener Chaos
topic Machine Learning
url https://arxiv.org/abs/2602.11794