Restless Bandit Problem with Rewards Generated by a Linear Gaussian Dynamical System

Jonathan Gornet, Bruno Sinopoli

Research output: Contribution to journalConference articlepeer-review

Abstract

Decision-making under uncertainty is a fundamental problem encountered frequently and can be formulated as a stochastic multi-armed bandit problem. In the problem, the learner interacts with an environment by choosing an action at each round, where a round is an instance of an interaction. In response, the environment reveals a reward, which is sampled from a stochastic process, to the learner. The goal of the learner is to maximize cumulative reward. In this work, we assume that the rewards are the inner product of an action vector and a state vector generated by a linear Gaussian dynamical system. To predict the reward for each action, we propose a method that takes a linear combination of previously observed rewards for predicting each action’s next reward. We show that, regardless of the sequence of previous actions chosen, the reward sampled for any previously chosen action can be used for predicting another action’s future reward, i.e. the reward sampled for action 1 at round t - 1 can be used for predicting the reward for action 2 at round t. This is accomplished by designing a modified Kalman filter with a matrix representation that can be learned for reward prediction. Numerical evaluations are carried out on a set of linear Gaussian dynamical systems and are compared with 2 other well-known stochastic multi-armed bandit algorithms.

Original languageEnglish
Pages (from-to)1790-1801
Number of pages12
JournalProceedings of Machine Learning Research
Volume242
StatePublished - 2024
Event6th Annual Learning for Dynamics and Control Conference, L4DC 2024 - Oxford, United Kingdom
Duration: Jul 15 2024Jul 17 2024

Keywords

  • Kalman filter
  • Non-stationary stochastic multi-armed bandit
  • stochastic dynamical systems

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