In single hypothesis testing, power is a non-decreasing function of type I error rate; hence it is desirable to test at the nominal level exactly to achieve optimal power. The puzzle lies in the fact that for multiple testing, under the false discovery rate paradigm, such a monotonic relationship may not hold. In particular, exact false discovery rate control may lead to a less powerful testing procedure if a test statistic fails to fulfil the monotone likelihood ratio condition. In this article, we identify different scenarios wherein the condition fails and give caveats for conducting multiple testing in practical settings
Consider the problem of testing s hypotheses simultaneously. The usual approach restricts attention ...
We consider a special class of multiple testing problems, consisting of M simultaneous point hypothe...
In multiple testing several criteria to control for type I errors exist. The false discovery rate, w...
In single hypothesis testing, power is a nondecreasing function of Type I error rate; hence it is de...
Significance testing is one of the main objectives of statistics. The Neyman-Pearson lemma provides...
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...
Improved procedures, in terms of smaller missed discovery rates (MDR), for performing multiple hypot...
Summary. The Neyman–Pearson lemma provides a simple procedure for optimally testing a single hypothe...
Significance testing is one of the main objectives of statistics. The Neyman-Pearson lemma provides ...
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...
In the last decade a growing amount of statistical research has been devoted to multiple testing, mo...
This article considers the problem of multiple hypothesis testing using t-tests. The observed data a...
Despite the popularity of the false discovery rate (FDR) as an error control metric for large-scale ...
Consider the problem of testing s hypotheses simultaneously. The usual approach restricts attention ...
We consider a special class of multiple testing problems, consisting of M simultaneous point hypothe...
In multiple testing several criteria to control for type I errors exist. The false discovery rate, w...
In single hypothesis testing, power is a nondecreasing function of Type I error rate; hence it is de...
Significance testing is one of the main objectives of statistics. The Neyman-Pearson lemma provides...
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...
Improved procedures, in terms of smaller missed discovery rates (MDR), for performing multiple hypot...
Summary. The Neyman–Pearson lemma provides a simple procedure for optimally testing a single hypothe...
Significance testing is one of the main objectives of statistics. The Neyman-Pearson lemma provides ...
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...
In the last decade a growing amount of statistical research has been devoted to multiple testing, mo...
This article considers the problem of multiple hypothesis testing using t-tests. The observed data a...
Despite the popularity of the false discovery rate (FDR) as an error control metric for large-scale ...
Consider the problem of testing s hypotheses simultaneously. The usual approach restricts attention ...
We consider a special class of multiple testing problems, consisting of M simultaneous point hypothe...
In multiple testing several criteria to control for type I errors exist. The false discovery rate, w...