NANAAPDec 16, 2014

Iterative Bregman Projections for Regularized Transportation Problems

arXiv:1412.5154
Originality Incremental advance
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It provides a practical algorithm for solving a wide class of optimal transport problems with linear constraints, benefiting researchers in machine learning, imaging, and fluid dynamics.

This paper introduces a numerical framework using iterative Bregman projections to efficiently solve regularized optimal transport problems, enabling applications to barycenters, tomography, and multi-marginal transport.

This article details a general numerical framework to approximate so-lutions to linear programs related to optimal transport. The general idea is to introduce an entropic regularization of the initial linear program. This regularized problem corresponds to a Kullback-Leibler Bregman di-vergence projection of a vector (representing some initial joint distribu-tion) on the polytope of constraints. We show that for many problems related to optimal transport, the set of linear constraints can be split in an intersection of a few simple constraints, for which the projections can be computed in closed form. This allows us to make use of iterative Bregman projections (when there are only equality constraints) or more generally Bregman-Dykstra iterations (when inequality constraints are in-volved). We illustrate the usefulness of this approach to several variational problems related to optimal transport: barycenters for the optimal trans-port metric, tomographic reconstruction, multi-marginal optimal trans-port and in particular its application to Brenier's relaxed solutions of in-compressible Euler equations, partial un-balanced optimal transport and optimal transport with capacity constraints.

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