Semi-supervised multiple testing

06/25/2021
by   David Mary, et al.
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An important limitation of standard multiple testing procedures is that the null distribution should be known. Here, we consider a null distribution-free approach for multiple testing in the following semi-supervised setting: the user does not know the null distribution, but has at hand a single sample drawn from this null distribution. In practical situations, this null training sample (NTS) can come from previous experiments, from a part of the data under test, from specific simulations, or from a sampling process. In this work, we present theoretical results that handle such a framework, with a focus on the false discovery rate (FDR) control and the Benjamini-Hochberg (BH) procedure. First, we introduce a procedure providing strong FDR control. Second, we also give a power analysis for that procedure suggesting that the price to pay for ignoring the null distribution is low when the NTS sample size n is sufficiently large in front of the number of test m; namely n≳ m/(max(1,k)), where k denotes the number of "detectable" alternatives. Third, to complete the picture, we also present a negative result that evidences an intrinsic transition phase to the general semi-supervised multiple testing problem and shows that the proposed method is optimal in the sense that its performance boundary follows this transition phase. Our theoretical properties are supported by numerical experiments, which also show that the delineated boundary is of correct order without further tuning any constant. Finally, we demonstrate that our approach provides a theoretical ground for standard practice in astronomical data analysis, and in particular for the procedure proposed in <cit.> for galaxy detection.

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