The estimation of a log-concave density on R is a canonical problem in the area of shape-constrained nonparametric inference.We present a Bayesian nonparametric approach to this problem based on an exponentiated Dirichlet process mixture prior and show that the posterior distribution converges to the log-concave truth at the (near-) minimax rate in Hellinger distance. Our proof proceeds by establishing a general contraction result based on the log-concave maximum likelihood estimator that prevents the need for further metric entropy calculations. We further present computationally more feasible approximations and both an empirical and hierarchical Bayes approach. All priors are illustrated numerically via simulations.

A Bayesian nonparametric approach to log-concave density estimation

Szabo, Botond
2020

Abstract

The estimation of a log-concave density on R is a canonical problem in the area of shape-constrained nonparametric inference.We present a Bayesian nonparametric approach to this problem based on an exponentiated Dirichlet process mixture prior and show that the posterior distribution converges to the log-concave truth at the (near-) minimax rate in Hellinger distance. Our proof proceeds by establishing a general contraction result based on the log-concave maximum likelihood estimator that prevents the need for further metric entropy calculations. We further present computationally more feasible approximations and both an empirical and hierarchical Bayes approach. All priors are illustrated numerically via simulations.
2020
2020
Mariucci, Ester; Ray, Kolyan; Szabo, Botond
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11565/4042447
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