Learning with CVaR-based feedback under potentially heavy tails
Abstract
We study learning algorithms that seek to minimize the conditional value-at-risk (CVaR), when all the learner knows is that the losses incurred may be heavy-tailed. We begin by studying a general-purpose estimator of CVaR for potentially heavy-tailed random variables, which is easy to implement in practice, and requires nothing more than finite variance and a distribution function that does not change too fast or slow around just the quantile of interest. With this estimator in hand, we then derive a new learning algorithm which robustly chooses among candidates produced by stochastic gradient-driven sub-processes. For this procedure we provide high-probability excess CVaR bounds, and to complement the theory we conduct empirical tests of the underlying CVaR estimator and the learning algorithm derived from it.
Cite
@article{arxiv.2006.02001,
title = {Learning with CVaR-based feedback under potentially heavy tails},
author = {Matthew J. Holland and El Mehdi Haress},
journal= {arXiv preprint arXiv:2006.02001},
year = {2020}
}