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Asymptotic normality of robust risk minimizers

5 April 2020
Stanislav Minsker
ArXiv (abs)PDFHTML
Abstract

This paper investigates asymptotic properties of a class of algorithms that can be viewed as robust analogues of the classical empirical risk minimization. These strategies are based on replacing the usual empirical average by a robust proxy of the mean, such as the median-of-means estimator. It is well known by now that the excess risk of resulting estimators often converges to 0 at the optimal rates under much weaker assumptions than those required by their "classical" counterparts. However, much less is known about asymptotic properties of the estimators themselves, for instance, whether robust analogues of the maximum likelihood estimators are asymptotically efficient. We make a step towards answering these questions and show that for a wide class of parametric problems, minimizers of the appropriately defined robust proxy of the risk converge to the minimizers of the true risk at the same rate, and often have the same asymptotic variance, as the estimators obtained by minimizing the usual empirical risk. Moreover, our results show that robust algorithms based on the so-called "min-max" type procedures in many cases provably outperform, is the asymptotic sense, algorithms based on direct risk minimization.

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