Smoothed log-concave maximum likelihood estimation with applications
Abstract
We study the smoothed log-concave maximum likelihood estimator of a probability distribution on . This is a fully automatic nonparametric density estimator, obtained as a canonical smoothing of the log-concave maximum likelihood estimator. We demonstrate its attractive features both through an analysis of its theoretical properties and a simulation study. Moreover, we use our methodology to develop a new test of log-concavity, and show how the estimator can be used as an intermediate stage of more involved procedures, such as constructing a classifier or estimating a functional of the density. Here again, the use of these procedures can be justified both on theoretical grounds and through its finite sample performance, and we illustrate its use in a breast cancer diagnosis (classification) problem.
Cite
@article{arxiv.1102.1191,
title = {Smoothed log-concave maximum likelihood estimation with applications},
author = {Yining Chen and Richard J. Samworth},
journal= {arXiv preprint arXiv:1102.1191},
year = {2014}
}
Comments
29 pages, 3 figures