In large-scale multiple testing problems, data are often collected from heterogeneous sources and hypotheses form into groups that exhibit different characteristics. Conventional approaches, including the pooled and separate analyses, fail to efficiently utilize the external grouping information. We develop a compound decision theoretic framework for testing grouped hypotheses and introduce an oracle procedure that minimizes the false nondiscovery rate subject to a constraint on the false discovery rate. It is shown that both the pooled and separate analyses can be uniformly improved by the oracle procedure. We then propose a data-driven procedure that is shown to be asymptotically optimal. Simulation studies show that our procedures enjoy ...
We present a theoretical basis for testing related endpoints. Typically, it is known how to construc...
Multiple testing of correlations arises in many applications including gene coexpression network ana...
In the last decade a growing amount of statistical research has been devoted to multiple testing, mo...
In large-scale multiple testing problems, data are often collected from heterogeneous sources and hy...
This paper continues the line of research initiated in Liu et. al. (2016) on developing a novel fram...
Significance testing is one of the main objectives of statistics. The Neyman-Pearson lemma provides...
2018-09-26Two-sample multiple testing has a wide range of applications. The conventional practice fi...
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 ...
The problem of multiple hypothesis testing with correlated test statistics is a very important probl...
This article considers the problem of multiple hypothesis testing using t-tests. The observed data a...
The use of weights provides an effective strategy to incorporate prior domain knowledge in large-sca...
Multiple testing, a situation where multiple hypothesis tests are performed simultaneously, is a cor...
A large-scale multiple testing problem simultaneously tests thousands or even millions of null hypot...
Many scientific experiments subject to rigorous statistical analysis involve the simultaneous evalua...
We present a theoretical basis for testing related endpoints. Typically, it is known how to construc...
Multiple testing of correlations arises in many applications including gene coexpression network ana...
In the last decade a growing amount of statistical research has been devoted to multiple testing, mo...
In large-scale multiple testing problems, data are often collected from heterogeneous sources and hy...
This paper continues the line of research initiated in Liu et. al. (2016) on developing a novel fram...
Significance testing is one of the main objectives of statistics. The Neyman-Pearson lemma provides...
2018-09-26Two-sample multiple testing has a wide range of applications. The conventional practice fi...
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 ...
The problem of multiple hypothesis testing with correlated test statistics is a very important probl...
This article considers the problem of multiple hypothesis testing using t-tests. The observed data a...
The use of weights provides an effective strategy to incorporate prior domain knowledge in large-sca...
Multiple testing, a situation where multiple hypothesis tests are performed simultaneously, is a cor...
A large-scale multiple testing problem simultaneously tests thousands or even millions of null hypot...
Many scientific experiments subject to rigorous statistical analysis involve the simultaneous evalua...
We present a theoretical basis for testing related endpoints. Typically, it is known how to construc...
Multiple testing of correlations arises in many applications including gene coexpression network ana...
In the last decade a growing amount of statistical research has been devoted to multiple testing, mo...