A Polynomial Time Algorithm for Maximum Likelihood Estimation of Multivariate Log-concave Densities
Abstract
We study the problem of computing the maximum likelihood estimator (MLE) of multivariate log-concave densities. Our main result is the first computationally efficient algorithm for this problem. In more detail, we give an algorithm that, on input a set of points in and an accuracy parameter , it runs in time , and outputs a log-concave density that with high probability maximizes the log-likelihood up to an additive . Our approach relies on a natural convex optimization formulation of the underlying problem that can be efficiently solved by a projected stochastic subgradient method. The main challenge lies in showing that a stochastic subgradient of our objective function can be efficiently approximated. To achieve this, we rely on structural results on approximation of log-concave densities and leverage classical algorithmic tools on volume approximation of convex bodies and uniform sampling from convex sets.
Cite
@article{arxiv.1812.05524,
title = {A Polynomial Time Algorithm for Maximum Likelihood Estimation of Multivariate Log-concave Densities},
author = {Ilias Diakonikolas and Anastasios Sidiropoulos and Alistair Stewart},
journal= {arXiv preprint arXiv:1812.05524},
year = {2018}
}