Copyright © 2012 Yongchao Ge and Xiaochun Li. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
Abstract
Consider the multiple testing problem of testing m null hypotheses H1,…,Hm, among which m0 hypotheses are truly null. Given the P-values for each hypothesis, the question of interest is
how to combine the P-values to find out which hypotheses are false nulls and possibly to make
a statistical inference on m0. Benjamini and Hochberg proposed a classical procedure that can
control the false discovery rate (FDR). The FDR control is a little bit unsatisfactory in that it
only concerns the expectation of the false discovery proportion (FDP). The control of the actual
random variable FDP has recently drawn much attention. For any level 1−α, this paper proposes
a procedure to construct an upper prediction bound (UPB) for the FDP for a fixed rejection
region. When 1−α=50%, our procedure is very close to the classical Benjamini and Hochberg
procedure. Simultaneous UPBs for all rejection regions' FDPs and the upper confidence bound
for the unknown m0 are presented consequently. This new proposed procedure works for finite
samples and hence avoids the slow convergence problem of the asymptotic theory.