Part of Advances in Neural Information Processing Systems 34 (NeurIPS 2021)
Khang Le, Huy Nguyen, Quang M Nguyen, Tung Pham, Hung Bui, Nhat Ho
We consider robust variants of the standard optimal transport, named robust optimal transport, where marginal constraints are relaxed via Kullback-Leibler divergence. We show that Sinkhorn-based algorithms can approximate the optimal cost of robust optimal transport in ˜O(n2ε) time, in which n is the number of supports of the probability distributions and ε is the desired error. Furthermore, we investigate a fixed-support robust barycenter problem between m discrete probability distributions with at most n number of supports and develop an approximating algorithm based on iterative Bregman projections (IBP). For the specific case m=2, we show that this algorithm can approximate the optimal barycenter value in ˜O(mn2ε) time, thus being better than the previous complexity ˜O(mn2ε2) of the IBP algorithm for approximating the Wasserstein barycenter.