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Approximation and Estimation of s-Concave Densities via Rényi Divergences

2 May 2015
Q. Han
J. Wellner
ArXiv (abs)PDFHTML
Abstract

In this paper, we study the approximation and estimation of sss-concave densities via R\'enyi divergence. We first show that the approximation of a probability measure QQQ by an sss-concave densities exists and is unique via the procedure of minimizing a divergence functional proposed by Koenker and Mizera (2010) if and only if QQQ admits full-dimensional support and a first moment. We also show continuity of the divergence functional in QQQ: if Qn→QQ_n \to QQn​→Q in the Wasserstein metric, then the projected densities converge in weighted L1L_1L1​ metrics and uniformly on closed subsets of the continuity set of the limit. Moreover, directional derivatives of the projected densities also enjoy local uniform convergence. This contains both on-the-model and off-the-model situations, and entails strong consistency of the divergence estimator of an sss-concave density under mild conditions. One interesting and important feature for the R\'enyi divergence estimator of an sss-concave density is that the estimator is intrinsically related with the estimation of log-concave densities via maximum likelihood methods. In fact, we show that for d=1d=1d=1 at least, the R\'enyi divergence estimators for sss-concave densities converge to the maximum likelihood estimator of a log-concave density as s↗0s \nearrow 0s↗0. The R\'enyi divergence estimator shares similar characterizations as the MLE for log-concave distributions, which allows us to develop pointwise asymptotic distribution theory assuming that the underlying density is sss-concave.

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