Self-Concordant Perturbations for Linear Bandits

Abstract

We consider the adversarial linear bandits setting and present a unified algorithmic framework that bridges Follow-the-Regularized-Leader (FTRL) and Follow-the-Perturbed-Leader (FTPL) methods, extending the known connection between them from the full-information setting. Within this framework, we introduce self-concordant perturbations, a family of probability distributions that mirror the role of self-concordant barriers previously employed in the FTRL-based SCRiBLe algorithm. Using this idea, we design a novel FTPL-based algorithm that combines self-concordant regularization with efficient stochastic exploration. Our approach achieves a regret of O(dn n) on both the d-dimensional hypercube and the 2 ball. On the 2 ball, this matches the rate attained by SCRiBLe. For the hypercube, this represents a d improvement over these methods and matches the optimal bound up to logarithmic factors.

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