A Bandit Approach to Sequential Experimental Design with False Discovery Control
–Neural Information Processing Systems
We propose a new adaptive sampling approach to multiple testing which aims to maximize statistical power while ensuring anytime false discovery control. We consider $n$ distributions whose means are partitioned by whether they are below or equal to a baseline (nulls), versus above the baseline (true positives). In addition, each distribution can be sequentially and repeatedly sampled. Using techniques from multi-armed bandits, we provide an algorithm that takes as few samples as possible to exceed a target true positive proportion (i.e.
Neural Information Processing Systems
Mar-16-2026, 23:00:23 GMT
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