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Conic Blackwell Algorithm: Parameter-Free Convex-Concave Saddle-Point Solving

27 May 2021
Julien Grand-Clément
Christian Kroer
ArXiv (abs)PDFHTML
Abstract

We develop new parameter-free and scale-free algorithms for solving convex-concave saddle-point problems. Our results are based on a new simple regret minimizer, the Conic Blackwell Algorithm+^++ (CBA+^++), which attains O(1/T)O(1/\sqrt{T})O(1/T​) average regret. Intuitively, our approach generalizes to other decision sets of interest ideas from the Counterfactual Regret minimization (CFR+^++) algorithm, which has very strong practical performance for solving sequential games on simplexes. We show how to implement CBA+^++ for the simplex, ℓp\ell_{p}ℓp​ norm balls, and ellipsoidal confidence regions in the simplex, and we present numerical experiments for solving matrix games and distributionally robust optimization problems. Our empirical results show that CBA+^++ is a simple algorithm that outperforms state-of-the-art methods on synthetic data and real data instances, without the need for any choice of step sizes or other algorithmic parameters.

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