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arxiv: 1710.02869 · v2 · pith:4OOBHC7Tnew · submitted 2017-10-08 · 💻 cs.AI · cs.LG· stat.ML

An Analysis of the Value of Information when Exploring Stochastic, Discrete Multi-Armed Bandits

classification 💻 cs.AI cs.LGstat.ML
keywords informationcriterionpolicyamountsbanditsdiscretehighmulti-armed
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In this paper, we propose an information-theoretic exploration strategy for stochastic, discrete multi-armed bandits that achieves optimal regret. Our strategy is based on the value of information criterion. This criterion measures the trade-off between policy information and obtainable rewards. High amounts of policy information are associated with exploration-dominant searches of the space and yield high rewards. Low amounts of policy information favor the exploitation of existing knowledge. Information, in this criterion, is quantified by a parameter that can be varied during search. We demonstrate that a simulated-annealing-like update of this parameter, with a sufficiently fast cooling schedule, leads to an optimal regret that is logarithmic with respect to the number of episodes.

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