Permutation inference for the general linear model
A. Winkler,G. Ridgway,2 作者,Thomas E. Nichols
2014 · DOI: 10.1016/j.neuroimage.2014.01.060
NeuroImage · 引用数 3,179
TLDR
This paper presents a generic framework for permutation inference for complex general linear models (glms) when the errors are exchangeable and/or have a symmetric distribution, and shows that, even in the presence of nuisance effects, these permutation inferences are powerful while providing excellent control of false positives in a wide range of common and relevant imaging research scenarios.
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