Ground Metric Learning on Graphs

Volume: 63, Issue: 1, Pages: 89 - 107
Published: Oct 30, 2020
Abstract
Optimal transport (OT) distances between probability distributions are parameterized by the ground metric they use between observations. Their relevance for real-life applications strongly hinges on whether that ground metric parameter is suitably chosen. The challenge of selecting it adaptively and algorithmically from prior knowledge, the so-called ground metric learning (GML) problem, has therefore appeared in various settings. In this paper,...
Paper Details
Title
Ground Metric Learning on Graphs
Published Date
Oct 30, 2020
Volume
63
Issue
1
Pages
89 - 107
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