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On the consistency of adaptive multiple tests

8 January 2018
Marc Ditzhaus
A. Janssen
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Abstract

Much effort has been done to control the "false discovery rate" (FDR) when mmm hypotheses are tested simultaneously. The FDR is the expectation of the "false discovery proportion" FDP=V/R\text{FDP}=V/RFDP=V/R given by the ratio of the number of false rejections VVV and all rejections RRR. In this paper, we have a closer look at the FDP for adaptive linear step-up multiple tests. These tests extend the well known Benjamini and Hochberg test by estimating the unknown amount m0m_0m0​ of the true null hypotheses. We give exact finite sample formulas for higher moments of the FDP and, in particular, for its variance. Using these allows us a precise discussion about the consistency of adaptive step-up tests. We present sufficient and necessary conditions for consistency on the estimators m^0\widehat m_0m0​ and the underlying probability regime. We apply our results to convex combinations of generalized Storey type estimators with various tuning parameters and (possibly) data-driven weights. The corresponding step-up tests allow a flexible adaptation. Moreover, these tests control the FDR at finite sample size. We compare these tests to the classical Benjamini and Hochberg test and discuss the advantages of it.

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