A Fast Proximal Point Method for Computing Exact Wasserstein Distance
Wasserstein distance plays increasingly important roles in machine learning, stochastic programming and image processing. Major efforts have been under way to address its high computational complexity, some leading to approximate or regularized variations such as Sinkhorn distance. However, as we wi...
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Zusammenfassung: | Wasserstein distance plays increasingly important roles in machine learning,
stochastic programming and image processing. Major efforts have been under way
to address its high computational complexity, some leading to approximate or
regularized variations such as Sinkhorn distance. However, as we will
demonstrate, regularized variations with large regularization parameter will
degradate the performance in several important machine learning applications,
and small regularization parameter will fail due to numerical stability issues
with existing algorithms. We address this challenge by developing an Inexact
Proximal point method for exact Optimal Transport problem (IPOT) with the
proximal operator approximately evaluated at each iteration using projections
to the probability simplex. The algorithm (a) converges to exact Wasserstein
distance with theoretical guarantee and robust regularization parameter
selection, (b) alleviates numerical stability issue, (c) has similar
computational complexity to Sinkhorn, and (d) avoids the shrinking problem when
apply to generative models. Furthermore, a new algorithm is proposed based on
IPOT to obtain sharper Wasserstein barycenter. |
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DOI: | 10.48550/arxiv.1802.04307 |