Date of Original Version



Conference Proceeding

Rights Management

Copyright 2014 by the author(s).

Abstract or Description

We consider nonparametric estimation of L2, Renyi-α and Tsallis-α divergences between continuous distributions. Our approach is to construct estimators for particular integral functionals of two densities and translate them into divergence estimators. For the integral functionals, our estimators are based on corrections of a preliminary plug-in estimator. We show that these estimators achieve the parametric convergence rate of n−1/2 when the densities’ smoothness, s, are both at least d/4 where d is the dimension. We also derive minimax lower bounds for this problem which confirm that s>d/4 is necessary to achieve the n−1/2 rate of convergence. We validate our theoretical guarantees with a number of simulations.



Published In

Journal of Machine Learning Research : Workshop and Conference Proceedings, 32.