Computational Hardness and Fast Algorithm for Fixed-Support Wasserstein Barycenter

02/12/2020
by   Tianyi Lin, et al.
0

We study in this paper the fixed-support Wasserstein barycenter problem (FS-WBP), which consists in computing the Wasserstein barycenter of m discrete probability measures supported on a finite metric space of size n. We show first that the constraint matrix arising from the standard linear programming (LP) representation of the FS-WBP is not totally unimodular when m ≥ 3 and n ≥ 3. This result answers an open question pertaining to the relationship between the FS-WBP and the minimum-cost flow (MCF) problem since it therefore proves that the FS-WBP in the standard LP form is not a MCF problem when m ≥ 3 and n ≥ 3. We also develop a provably fast deterministic variant of the celebrated iterative Bregman projection (IBP) algorithm, named FastIBP algorithm, with the complexity bound of O(mn^7/3ε^-4/3) where ε∈ (0, 1) is the tolerance. This complexity bound is better than the best known complexity bound of O(mn^2ε^-2) from the IBP algorithm in terms of ε, and that of O(mn^5/2ε^-1) from other accelerated algorithms in terms of n. Finally, we conduct extensive experiments with both synthetic and real data and demonstrate the favorable performance of the FastIBP algorithm in practice.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset