KL-UCB-switch: optimal regret bounds for stochastic bandits from both a distribution-dependent and a distribution-free viewpoints

Date: 
May, 2018
Arxiv Number: 
1805.05071
Hal Number: 
01785705
Abstract: 
In the context of K-armed stochastic bandits with distribution only assumed to be supported by [0,1], we introduce a new algorithm, KL-UCB-switch, and prove that is enjoys simultaneously a distribution-free regret bound of optimal order \sqrt{KT} and a distribution-dependent regret bound of optimal order as well, that is, matching the k ln(T) lower bound by Lai and Robbins and Burnetas and Katehakis.