Linear optimal transport embedding: provable Wasserstein classification for certain rigid transformations and perturbations

Author:

Moosmüller Caroline1,Cloninger Alexander2

Affiliation:

1. Department of Mathematics, University of North Carolina at Chapel Hill , Chapel Hill, NC 27599, USA

2. Department of Mathematics and Halicioğlu Data Science Institute, University of California , San Diego, La Jolla, CA 92093, USA

Abstract

Abstract Discriminating between distributions is an important problem in a number of scientific fields. This motivated the introduction of Linear Optimal Transportation (LOT), which embeds the space of distributions into an $L^2$-space. The transform is defined by computing the optimal transport of each distribution to a fixed reference distribution and has a number of benefits when it comes to speed of computation and to determining classification boundaries. In this paper, we characterize a number of settings in which LOT embeds families of distributions into a space in which they are linearly separable. This is true in arbitrary dimension, and for families of distributions generated through perturbations of shifts and scalings of a fixed distribution. We also prove conditions under which the $L^2$ distance of the LOT embedding between two distributions in arbitrary dimension is nearly isometric to Wasserstein-2 distance between those distributions. This is of significant computational benefit, as one must only compute $N$ optimal transport maps to define the $N^2$ pairwise distances between $N$ distributions. We demonstrate the benefits of LOT on a number of distribution classification problems.

Funder

National Science Foundation

Russell Sage Foundation

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics,Computational Theory and Mathematics,Numerical Analysis,Statistics and Probability,Analysis

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