Calculus of Variations and Geometric Measure Theory

M. Bonafini - B. Schmitzer

Domain decomposition for entropy regularized optimal transport

created by bonafini on 20 Jun 2021
modified on 28 Nov 2021

[BibTeX]

Published Paper

Inserted: 20 jun 2021
Last Updated: 28 nov 2021

Journal: Numerische Mathematik
Volume: 149
Pages: 819–870
Year: 2021
Doi: https://doi.org/10.1007/s00211-021-01245-0

ArXiv: 2001.10986 PDF

Abstract:

We study Benamou's domain decomposition algorithm for optimal transport in the entropy regularized setting. The key observation is that the regularized variant converges to the globally optimal solution under very mild assumptions. We prove linear convergence of the algorithm with respect to the Kullback--Leibler divergence and illustrate the (potentially very slow) rates with numerical examples. On problems with sufficient geometric structure (such as Wasserstein distances between images) we expect much faster convergence. We then discuss important aspects of a computationally efficient implementation, such as adaptive sparsity, a coarse-to-fine scheme and parallelization, paving the way to numerically solving large-scale optimal transport problems. We demonstrate efficient numerical performance for computing the Wasserstein-2 distance between 2D images and observe that, even without parallelization, domain decomposition compares favorably to applying a single efficient implementation of the Sinkhorn algorithm in terms of runtime, memory and solution quality.