Authors
Francisco Robledo Relaño, Vivek Borkar, Urtzi Ayesta, Konstantin Avrachenkov
Publication date
2024/6
Journal
ACM Transactions on Modeling and Performance Evaluation of Computing Systems
Publisher
ACM
Description
The Whittle index policy is a heuristic that has shown remarkably good performance (with guaranteed asymptotic optimality) when applied to the class of problems known as Restless Multi-Armed Bandit Problems (RMABPs). In this paper we present QWI and QWINN, two reinforcement learning algorithms, respectively tabular and deep, to learn the Whittle index for the total discounted criterion. The key feature is the use of two time-scales, a faster one to update the state-action Q-values, and a relatively slower one to update the Whittle indices. In our main theoretical result we show that QWI, which is a tabular implementation, converges to the real Whittle indices. We then present QWINN, an adaptation of QWI algorithm using neural networks to compute the Q-values on the faster time-scale, which is able to extrapolate information from one state to another and scales naturally to large state-space environments. For …
Scholar articles
F Robledo Relaño, V Borkar, U Ayesta, K Avrachenkov - ACM Transactions on Modeling and Performance …, 2024