A unified framework for bandit multiple testing
–Neural Information Processing Systems
In bandit multiple hypothesis testing, each arm corresponds to a different null hypothesis that we wish to test, and the goal is to design adaptive algorithms that correctly identify large set of interesting arms (true discoveries), while only mistakenly identifying a few uninteresting ones (false discoveries).
Neural Information Processing Systems
Nov-15-2025, 00:49:20 GMT
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