arXiv:1908.01394 [cs.LG]AbstractReferencesReviewsResources
Learning to Transport with Neural Networks
Published 2019-08-04Version 1
We compare several approaches to learn an Optimal Map, represented as a neural network, between probability distributions. The approaches fall into two categories: ``Heuristics'' and approaches with a more sound mathematical justification, motivated by the dual of the Kantorovitch problem. Among the algorithms we consider a novel approach involving dynamic flows and reductions of Optimal Transport to supervised learning.
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