Authors
Giulia Luise, Saverio Salzo, Massimiliano Pontil, Carlo Ciliberto
Publication date
2019
Conference
Advances in Neural Information Processing Systems
Pages
9322-9333
Description
We present a novel algorithm to estimate the barycenter of arbitrary probability distributions with respect to the Sinkhorn divergence. Based on a Frank-Wolfe optimization strategy, our approach proceeds by populating the support of the barycenter incrementally, without requiring any pre-allocation. We consider discrete as well as continuous distributions, proving convergence rates of the proposed algorithm in both settings. Key elements of our analysis are a new result showing that the Sinkhorn divergence on compact domains has Lipschitz continuous gradient with respect to the Total Variation and a characterization of the sample complexity of Sinkhorn potentials. Experiments validate the effectiveness of our method in practice.
Total citations
20202021202220232024162215164
Scholar articles
G Luise, S Salzo, M Pontil, C Ciliberto - Advances in neural information processing systems, 2019