Article ID Journal Published Year Pages File Type
1149096 Journal of Statistical Planning and Inference 2010 16 Pages PDF
Abstract

In the multiple testing context, a challenging problem is the estimation of the proportion π0π0 of true null hypotheses. A large number of estimators of this quantity rely on identifiability assumptions that either appear to be violated on real data, or can be at least relaxed. The proposed estimator π^0 results from density estimation by histograms, and cross-validation. Several consistency results are derived under independence.A new (plug-in) multiple testing procedure (MTP) is also described, based on the Benjamini and Hochberg procedure (BH-procedure) and the proposed estimator. This procedure is asymptotically optimal, provides the asymptotic desired false discovery rate (FDR) control, and is more powerful than the BH-procedure.The non-asymptotic behavior of π^0 is finally assessed through several simulation experiments. It outperforms numerous existing estimators in usual settings, and remains accurate with “U-shape” densities where other estimators usually fail. It does not exhibit any strong sensitivity to dependence. With m   block-structured dependent data, it stays reliable up to a within block correlation ρ=0.5ρ=0.5, when m/50 blocks are used.

Related Topics
Physical Sciences and Engineering Mathematics Applied Mathematics
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