MLITLGMar 29, 2022

Best Arm Identification in Restless Markov Multi-Armed Bandits

arXiv:2203.15236v15 citationsh-index: 36
Originality Incremental advance
AI Analysis

This addresses a more difficult setting in bandit problems for decision-making under uncertainty, but it is incremental as it extends prior work from rested to restless arms.

The paper tackles the problem of identifying the best arm in restless Markov multi-armed bandits, where arms evolve as Markov processes even when not selected, and derives the first asymptotic lower bound on the expected time to find the best arm with a given error probability, while proposing a sequential policy that achieves an upper bound that improves with a parameter R.

We study the problem of identifying the best arm in a multi-armed bandit environment when each arm is a time-homogeneous and ergodic discrete-time Markov process on a common, finite state space. The state evolution on each arm is governed by the arm's transition probability matrix (TPM). A decision entity that knows the set of arm TPMs but not the exact mapping of the TPMs to the arms, wishes to find the index of the best arm as quickly as possible, subject to an upper bound on the error probability. The decision entity selects one arm at a time sequentially, and all the unselected arms continue to undergo state evolution ({\em restless} arms). For this problem, we derive the first-known problem instance-dependent asymptotic lower bound on the growth rate of the expected time required to find the index of the best arm, where the asymptotics is as the error probability vanishes. Further, we propose a sequential policy that, for an input parameter $R$, forcibly selects an arm that has not been selected for $R$ consecutive time instants. We show that this policy achieves an upper bound that depends on $R$ and is monotonically non-increasing as $R\to\infty$. The question of whether, in general, the limiting value of the upper bound as $R\to\infty$ matches with the lower bound, remains open. We identify a special case in which the upper and the lower bounds match. Prior works on best arm identification have dealt with (a) independent and identically distributed observations from the arms, and (b) rested Markov arms, whereas our work deals with the more difficult setting of restless Markov arms.

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