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Trading off rewards and errors in multi-armed bandits

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In multi-armed bandits, the most-explored arms are the most informative, while reward maximization typically pulls only the best arm. We study the tradeoff between identifying arm means accurately and accumulating reward, and present an algorithm with regret guarantees that interpolates between the two objectives. We provide both upper and lower bounds and validate empirically.

Akram Erraqabi, Alessandro Lazaric, Michal Valko, Emma Brunskill, Yun-En Liu• 2026

Related benchmarks

TaskDatasetResultRank
Multi-Armed BanditsTreefrog Treasure
Estimation Error5.859
10
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