Michael Arbel (University College London)
Thursday, April 9, 2020 - 11:00
MPI für Mathematik in den Naturwissenschaften Leipzig
 ,    , Videobroadcast, 3. Etage
Join Zoom Meeting https://ucla.zoom.us/j/568139806 Meeting ID: 568 139 806

Abstract: Many machine learning problems can be expressed as the optimization of some cost functional over a parametric family of probability distributions. It is often beneficial to solve such optimization problems using natural gradient methods. These methods are invariant to the parametrization of the family, and thus can yield more effective optimization. Unfortunately, computing the natural gradient is challenging as it requires inverting a high dimensional matrix at each iteration. We propose a general framework to approximate the natural gradient for the Wasserstein metric, by leveraging a dual formulation of the metric restricted to a Reproducing Kernel Hilbert Space. Our approach leads to an estimator for gradient direction that can trade-off accuracy and computational cost, with theoretical guarantees. We verify its accuracy on simple examples, and show the advantage of using such an estimator in classification tasks on Cifar10 and Cifar100 empirically. https://arxiv.org/abs/1910.09652

submitted by Valeria Hünniger (Valeria.Huenniger@mis.mpg.de, 0341 9959 50)