Regularized Optimal Transport is Ground Cost Adversarial

02/10/2020
by   François-Pierre Paty, et al.
0

Regularizing Wasserstein distances has proved to be the key in the recent advances of optimal transport (OT) in machine learning. Most prominent is the entropic regularization of OT, which not only allows for fast computations and differentiation using Sinkhorn algorithm, but also improves stability with respect to data and accuracy in many numerical experiments. Theoretical understanding of these benefits remains unclear, although recent statistical works have shown that entropy-regularized OT mitigates classical OT's curse of dimensionality. In this paper, we adopt a more geometrical point of view, and show using Fenchel duality that any convex regularization of OT can be interpreted as ground cost adversarial. This incidentally gives access to a robust dissimilarity measure on the ground space, which can in turn be used in other applications. We propose algorithms to compute this robust cost, and illustrate the interest of this approach empirically.

READ FULL TEXT

page 8

page 14

research
12/19/2020

Entropy-regularized optimal transport on multivariate normal and q-normal distributions

Distance and divergence of the probability measures play a central role ...
research
10/13/2022

On the potential benefits of entropic regularization for smoothing Wasserstein estimators

This paper is focused on the study of entropic regularization in optimal...
research
09/03/2022

Entropy-regularized Wasserstein distributionally robust shape and topology optimization

This brief note aims to introduce the recent paradigm of distributional ...
research
05/15/2019

Geometric Losses for Distributional Learning

Building upon recent advances in entropy-regularized optimal transport, ...
research
06/03/2020

Debiased Sinkhorn barycenters

Entropy regularization in optimal transport (OT) has been the driver of ...
research
12/04/2019

Informative GANs via Structured Regularization of Optimal Transport

We tackle the challenge of disentangled representation learning in gener...
research
03/14/2023

Fast Regularized Discrete Optimal Transport with Group-Sparse Regularizers

Regularized discrete optimal transport (OT) is a powerful tool to measur...

Please sign up or login with your details

Forgot password? Click here to reset