Testing of multiple hypotheses involves statistics that are strongly dependent in some applications, but most work on this subject is based on the assumption of independence. We propose a new method for estimating the false discovery rate of multiple hypothesis tests, in which the density of test scores is estimated parametrically by minimizing the Kullback–Leibler distance between the unknown density and its estimator using the stochastic approximation algorithm, and the false discovery rate is estimated using the ensemble averaging method. Our method is applicable under general dependence between test statistics. Numerical comparisons between our method and several competitors, conducted on simulated and real data examples, show th...
Multiple hypothesis testing is a fundamental problem in high dimensional inference, with wide applic...
AbstractMultiple hypotheses testing is concerned with appropriately controlling the rate of false po...
Simultaneously testing a collection of null hypotheses about a data generating distribution based on...
Testing of multiple hypotheses involves statistics that are strongly dependent in some applications,...
International audienceHow to weigh the Benjamini-Hochberg procedure? In the context of multiple hypo...
Multiple testing, a situation where multiple hypothesis tests are performed simultaneously, is a cor...
Modern scientific studies from many diverse areas of research abound with multiple hypothesis testin...
In the context of multiple hypothesis testing, the proportion p 0 of true null hypotheses in the poo...
We propose probabilistic lower bounds for the number of false null hypotheses when testing multiple ...
Abstract Most false discovery rate (FDR) controlling procedures require certain assumptions on the j...
Consider the problem of testing s hypotheses simultaneously. The usual approach restricts attention ...
This article considers the problem of multiple hypothesis testing using t-tests. The observed data a...
We consider the class of all multiple testing methods controlling tail probabilities of the false di...
In the last decade a growing amount of statistical research has been devoted to multiple testing, mo...
Despite the popularity of the false discovery rate (FDR) as an error control metric for large-scale ...
Multiple hypothesis testing is a fundamental problem in high dimensional inference, with wide applic...
AbstractMultiple hypotheses testing is concerned with appropriately controlling the rate of false po...
Simultaneously testing a collection of null hypotheses about a data generating distribution based on...
Testing of multiple hypotheses involves statistics that are strongly dependent in some applications,...
International audienceHow to weigh the Benjamini-Hochberg procedure? In the context of multiple hypo...
Multiple testing, a situation where multiple hypothesis tests are performed simultaneously, is a cor...
Modern scientific studies from many diverse areas of research abound with multiple hypothesis testin...
In the context of multiple hypothesis testing, the proportion p 0 of true null hypotheses in the poo...
We propose probabilistic lower bounds for the number of false null hypotheses when testing multiple ...
Abstract Most false discovery rate (FDR) controlling procedures require certain assumptions on the j...
Consider the problem of testing s hypotheses simultaneously. The usual approach restricts attention ...
This article considers the problem of multiple hypothesis testing using t-tests. The observed data a...
We consider the class of all multiple testing methods controlling tail probabilities of the false di...
In the last decade a growing amount of statistical research has been devoted to multiple testing, mo...
Despite the popularity of the false discovery rate (FDR) as an error control metric for large-scale ...
Multiple hypothesis testing is a fundamental problem in high dimensional inference, with wide applic...
AbstractMultiple hypotheses testing is concerned with appropriately controlling the rate of false po...
Simultaneously testing a collection of null hypotheses about a data generating distribution based on...