Permutation methods can provide exact control of false positives and allow the use of non-standard statistics, making only weak assumptions about the data. With the availability of fast and inexpensive computing, their main limitation would be some lack of flexibility to work with arbitrary experimental designs. In this paper we report on results on approximate permutation methods that are more flexible with respect to the experimental design and nuisance variables, and conduct detailed simulations to identify the best method for settings that are typical for imaging research scenarios. We present a generic framework for permutation inference for complex general linear models (glms) when the errors are exchangeable and/or have a symmetric d...
We introduce and explore an approach to estimating statistical significance of classification accura...
Permutation testing is a non-parametric method for obtaining the max null distribution used to compu...
A fundamental question that often occurs in statistical tests is the normality of distributions. Cou...
AbstractPermutation methods can provide exact control of false positives and allow the use of non-st...
AbstractPermutation tests are increasingly being used as a reliable method for inference in neuroima...
Permutation tests are increasingly being used as a reliable method for inference in neuroimaging ana...
This is the digital Appendix to the DPhil thesis entitled "Widening the applicability of permutation...
AbstractUnder weak and reasonable assumptions, mainly that data are exchangeable under the null hypo...
Abstract Multiple hypothesis testing is a significant problem in nearly all neuroimaging studies. In...
Multiple hypothesis testing is a significant problem in nearly all neuroimaging studies. In order to...
Requiring only minimal assumptions for validity, nonparametric permutation testing provides a flexib...
Canonical correlation analysis (CCA) has become a key tool for population neuroimaging, allowing inv...
Editor: Permutation tests have been proposed for a variety of problems going back to the early works...
In this thesis we demonstrate that direct measurement and comparison across subjects of the surface ...
Permutation testing is a non-parametric method for obtaining the max null distribution used to compu...
We introduce and explore an approach to estimating statistical significance of classification accura...
Permutation testing is a non-parametric method for obtaining the max null distribution used to compu...
A fundamental question that often occurs in statistical tests is the normality of distributions. Cou...
AbstractPermutation methods can provide exact control of false positives and allow the use of non-st...
AbstractPermutation tests are increasingly being used as a reliable method for inference in neuroima...
Permutation tests are increasingly being used as a reliable method for inference in neuroimaging ana...
This is the digital Appendix to the DPhil thesis entitled "Widening the applicability of permutation...
AbstractUnder weak and reasonable assumptions, mainly that data are exchangeable under the null hypo...
Abstract Multiple hypothesis testing is a significant problem in nearly all neuroimaging studies. In...
Multiple hypothesis testing is a significant problem in nearly all neuroimaging studies. In order to...
Requiring only minimal assumptions for validity, nonparametric permutation testing provides a flexib...
Canonical correlation analysis (CCA) has become a key tool for population neuroimaging, allowing inv...
Editor: Permutation tests have been proposed for a variety of problems going back to the early works...
In this thesis we demonstrate that direct measurement and comparison across subjects of the surface ...
Permutation testing is a non-parametric method for obtaining the max null distribution used to compu...
We introduce and explore an approach to estimating statistical significance of classification accura...
Permutation testing is a non-parametric method for obtaining the max null distribution used to compu...
A fundamental question that often occurs in statistical tests is the normality of distributions. Cou...