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Efficient Online-Bandit Strategies for Minimax Learning Problems

Abstract

Several learning problems involve solving min-max problems, e.g., empirical distributional robust learning or learning with non-standard aggregated losses. More specifically, these problems are convex-linear problems where the minimization is carried out over the model parameters wWw\in\mathcal{W} and the maximization over the empirical distribution pKp\in\mathcal{K} of the training set indexes, where K\mathcal{K} is the simplex or a subset of it. To design efficient methods, we let an online learning algorithm play against a (combinatorial) bandit algorithm. We argue that the efficiency of such approaches critically depends on the structure of K\mathcal{K} and propose two properties of K\mathcal{K} that facilitate designing efficient algorithms. We focus on a specific family of sets Sn,k\mathcal{S}_{n,k} encompassing various learning applications and provide high-probability convergence guarantees to the minimax values.

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