Bounded Regret for Finitely Parameterized Multi-Armed Bandits
Abstract
We consider the problem of finitely parameterized multi-armed bandits where the model of the underlying stochastic environment can be characterized based on a common unknown parameter. The true parameter is unknown to the learning agent. However, the set of possible parameters, which is finite, is known a priori. We propose an algorithm that is simple and easy to implement, which we call Finitely Parameterized Upper Confidence Bound (FP-UCB) algorithm, which uses the information about the underlying parameter set for faster learning. In particular, we show that the FP-UCB algorithm achieves a bounded regret under some structural condition on the underlying parameter set. We also show that, if the underlying parameter set does not satisfy the necessary structural condition, the FP-UCB algorithm achieves a logarithmic regret, but with a smaller preceding constant compared to the standard UCB algorithm. We also validate the superior performance of the FP-UCB algorithm through extensive numerical simulations.
Cite
@article{arxiv.2003.01328,
title = {Bounded Regret for Finitely Parameterized Multi-Armed Bandits},
author = {Kishan Panaganti and Dileep Kalathil},
journal= {arXiv preprint arXiv:2003.01328},
year = {2020}
}
Comments
15 pages, 7 figures, Reinforcement Learning, Multi-armed Bandits, Sequential Decision Making