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Neural Optimal Transport with General Cost Functionals

A novel neural network-based approach computes optimal transport plans for general cost functionals, providing continuous and out-of-sample solutions, particularly useful for maintaining class-wise structure in high-dimensional data.

Year
2022
Venue
arXiv 2022
Authors
5
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arxiv.org/abs/2205.15403v4ARXIV-DEFAULT
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Abstract

We introduce a novel neural network-based algorithm to compute optimal transport (OT) plans for general cost functionals. In contrast to common Euclidean costs, i.e., $\ell^1$ or $\ell^2$, such functionals provide more flexibility and allow using auxiliary information, such as class labels, to construct the required transport map. Existing methods for general costs are discrete and have limitations in practice, i.e. they do not provide an out-of-sample estimation. We address the challenge of designing a continuous OT approach for general costs that generalizes to new data points in high-dimensional spaces, such as images. Additionally, we provide the theoretical error analysis for our recovered transport plans. As an application, we construct a cost functional to map data distributions while preserving the class-wise structure.

Authors

5