The present article proposes general single-step multiple testing procedures for controlling Type I error rates defined as arbitrary parameters of the distribution of the number of Type I errors, such as the generalized family-wise error rate. A key feature of our approach is the test statistics null distribution (rather than data generating null distribution) used to derive cut-offs (i.e., rejection regions) for these test statistics and the resulting adjusted p-values. For general null hypotheses, corresponding to submodels for the data generating distribution, we identify an asymptotic domination condition for a null distribution under which single-step common-quantile and common-cut-off procedures asymptotically control the Type I err...
Estimation of the number or proportion of true null hypotheses in multiple-testing problems has beco...
"Consider the problem of testing s hypotheses simultaneously. In this paper, we derive methods which...
Simultaneously testing a collection of null hypotheses about a data generating distribution based on...
The present article proposes general single-step multiple testing procedures for controlling Type I ...
The present article proposes two step-down multiple testing procedures for asymptotic control of th...
The accompanying articles by Dudoit et al. (2003b) and van der Laan et al. (2003) provide single-ste...
The present article proposes two step-down multiple testing procedures for asymptotic control of the...
This chapter proposes widely applicable resampling-based single-step and stepwise multiple testing p...
Multiple hypothesis testing problems arise frequently in biomedical and genomic research, for instan...
Consider the problem of testing s hypotheses simultaneously. The usual approach restricts attention ...
The Bioconductor R package multtest implements widely applicable resampling-based single-step and st...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
Estimation of the number or proportion of true null hypotheses in multiple-testing problems has beco...
"Consider the problem of testing s hypotheses simultaneously. In this paper, we derive methods which...
Simultaneously testing a collection of null hypotheses about a data generating distribution based on...
The present article proposes general single-step multiple testing procedures for controlling Type I ...
The present article proposes two step-down multiple testing procedures for asymptotic control of th...
The accompanying articles by Dudoit et al. (2003b) and van der Laan et al. (2003) provide single-ste...
The present article proposes two step-down multiple testing procedures for asymptotic control of the...
This chapter proposes widely applicable resampling-based single-step and stepwise multiple testing p...
Multiple hypothesis testing problems arise frequently in biomedical and genomic research, for instan...
Consider the problem of testing s hypotheses simultaneously. The usual approach restricts attention ...
The Bioconductor R package multtest implements widely applicable resampling-based single-step and st...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
In multiple hypotheses testing, it is important to control the probability of rejecting true null ...
Estimation of the number or proportion of true null hypotheses in multiple-testing problems has beco...
"Consider the problem of testing s hypotheses simultaneously. In this paper, we derive methods which...
Simultaneously testing a collection of null hypotheses about a data generating distribution based on...