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Fast Computation of Optimal Transport via Entropy-Regularized Extragradient Methods

SIAM Journal on Optimization (SIOPT), 2023
Abstract

Efficient computation of the optimal transport distance between two distributions serves as an algorithm subroutine that empowers various applications. This paper develops a scalable first-order optimization-based method that computes optimal transport to within ε\varepsilon additive accuracy with runtime O~(n2/ε)\widetilde{O}( n^2/\varepsilon), where nn denotes the dimension of the probability distributions of interest. Our algorithm achieves the state-of-the-art computational guarantees among all first-order methods, while exhibiting favorable numerical performance compared to classical algorithms like Sinkhorn and Greenkhorn. Underlying our algorithm designs are two key elements: (a) converting the original problem into a bilinear minimax problem over probability distributions; (b) exploiting the extragradient idea -- in conjunction with entropy regularization and adaptive learning rates -- to accelerate convergence.

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