Sinkhorn Divergences: Bridging the gap between Optimal Transport and MMD

Dez 13, 2019

Sprecher:innen

Über

Sinkhorn Divergences, based on entropy-regularized OT, were first introduced by Cuturi in 2013 as a solution to the computational burden of OT. However, this family of losses actually interpolates between OT (no regularization) and MMD (infinite regularization). This interpolation property is also true in terms of sample complexity, and thus regularizing OT breaks its curse of dimension. We will illustrate these theoretical claims on a set of learning problems like learning a distribution from samples.

Organisator

Kategorien

Über NIPS 2019

Neural Information Processing Systems (NeurIPS) is a multi-track machine learning and computational neuroscience conference that includes invited talks, demonstrations, symposia and oral and poster presentations of refereed papers. Following the conference, there are workshops which provide a less formal setting.

Präsentation speichern

Soll diese Präsentation für 1000 Jahre gespeichert werden?

Wie speichern wir Präsentationen?

Ewigspeicher-Fortschrittswert: 0 = 0.0%

Freigeben

Empfohlene Videos

Präsentationen, deren Thema, Kategorie oder Sprecher:in ähnlich sind

Interessiert an Vorträgen wie diesem? NIPS 2019 folgen