Approximative Algorithms for Multi-Marginal Optimal Transport and Free-Support Wasserstein Barycenters

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Publication:6389923

arXiv2202.00954MaRDI QIDQ6389923

Johannes von Lindheim

Publication date: 2 February 2022

Abstract: Computationally solving multi-marginal optimal transport (MOT) with squared Euclidean costs for N discrete probability measures has recently attracted considerable attention, in part because of the correspondence of its solutions with Wasserstein-2 barycenters, which have many applications in data science. In general, this problem is NP-hard, calling for practical approximative algorithms. While entropic regularization has been successfully applied to approximate Wasserstein barycenters, this loses the sparsity of the optimal solution, making it difficult to solve the MOT problem directly in practice because of the curse of dimensionality. Thus, for obtaining barycenters, one usually resorts to fixed-support restrictions to a grid, which is, however, prohibitive in higher ambient dimensions d. In this paper, after analyzing the relationship between MOT and barycenters, we present two algorithms to approximate the solution of MOT directly, requiring mainly just N1 standard two-marginal OT computations. Thus, they are fast, memory-efficient and easy to implement and can be used with any sparse OT solver as a black box. Moreover, they produce sparse solutions and show promising numerical results. We analyze these algorithms theoretically, proving upper and lower bounds for the relative approximation error.




Has companion code repository: https://github.com/jvlindheim/mot








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