AI RESEARCH
Best of both worlds: Stochastic & adversarial best-arm identification
arXiv CS.LG
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ArXi:2604.14860v1 Announce Type: cross We study bandit best-arm identification with arbitrary and potentially adversarial rewards. A simple random uniform learner obtains the optimal rate of error in the adversarial scenario. However, this type of strategy is suboptimal when the rewards are sampled stochastically. Therefore, we ask: Can we design a learner that performs optimally in both the stochastic and adversarial problems while not being aware of the nature of the rewards? First, we show that designing such a learner is impossible in general.