Generative modeling with low-rank Wasserstein polynomial chaos expansions
Robert Gruhlke, Martin Eigel

TL;DR
This paper introduces a novel Wasserstein polynomial chaos expansion method that combines optimal transport, unsupervised learning, and tensor train formats to efficiently model complex stochastic systems, demonstrated on a high-dimensional material upscaling problem.
Contribution
It develops a new WPCE approach that handles discontinuous and high-dimensional models using Wasserstein distances, tensor train formats, and advanced optimization techniques.
Findings
Effective modeling of non-periodic random fields
Handles discontinuous and multimodal distributions
Reduces computational complexity in high dimensions
Abstract
A new Wasserstein multi-element polynomial chaos expansion (WPCE) is proposed, which is inspired by recent advances in computational optimal transport for estimating Wasserstein distances. The developed method combines unsupervised learning with the explicit functional representation of a random vector . Its training only relies on a finite set of samples from an unknown distribution, which is used to minimize a regularized empirical Wasserstein metric known as debiased Sinkhorn divergence. An interesting application that motivates the approach comes from the numerical upscaling of non-periodic random fields defined on a micro-scale. The WPCE can encode higher order stochastic information about the effective material behavior in contrast to the constant characterization with stochastic homogenization. A striking feature of the new method is the generalization of common diffeomorphic…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Composite Material Mechanics · Geometric Analysis and Curvature Flows
