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Geometrical Insights for Implicit Generative Modeling

21 December 2017
Léon Bottou
Martín Arjovsky
David Lopez-Paz
Maxime Oquab
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Abstract

Learning algorithms for implicit generative models can optimize a variety of criteria that measure how the data distribution differs from the implicit model distribution, including the Wasserstein distance, the Energy distance, and the Maximum Mean Discrepancy criterion. A careful look at the geometries induced by these distances on the space of probability measures reveals interesting differences. In particular, we can establish surprising approximate global convergence guarantees for the 111-Wasserstein distance,even when the parametric generator has a nonconvex parametrization.

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