Towards minimax policies for online linear optimization with bandit feedback
S\'ebastien Bubeck, Nicol\`o Cesa-Bianchi, Sham M. Kakade

TL;DR
This paper introduces new algorithms for online linear optimization with bandit feedback that achieve near-optimal regret bounds, improving computational efficiency and reducing regret factors compared to prior methods.
Contribution
It presents a new exponential weights algorithm with improved regret bounds and a Mirror Descent-based approach for efficient strategies on specific action sets.
Findings
Regret of order √(d n log N) for finite action sets.
First computationally efficient algorithm with d√n regret for hypercube actions.
Achieves minimax optimal regret bounds up to logarithmic factors.
Abstract
We address the online linear optimization problem with bandit feedback. Our contribution is twofold. First, we provide an algorithm (based on exponential weights) with a regret of order for any finite action set with actions, under the assumption that the instantaneous loss is bounded by 1. This shaves off an extraneous factor compared to previous works, and gives a regret bound of order for any compact set of actions. Without further assumptions on the action set, this last bound is minimax optimal up to a logarithmic factor. Interestingly, our result also shows that the minimax regret for bandit linear optimization with expert advice in dimension is the same as for the basic -armed bandit with expert advice. Our second contribution is to show how to use the Mirror Descent algorithm to obtain computationally efficient…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Optimization and Search Problems · Reinforcement Learning in Robotics
