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A new nonparametric approach for multiplicity control: Optimal Subset procedures

机译:一种用于多样性控制的新非参数方法:最优子集程序

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A new approach for multiplicity control (Optimal Subset) is presented. This is based on the selection of the best subset of partial (univariate) hypotheses producing the minimal p-value. In this work, we show how to perform this new procedure in the permutation framework, choosing suitable combining functions and permutation strategies. The optimal subset approach can be very useful in exploratory studies because it performs a weak control for multiplicity which can be a valid alternative to the False Discovery Rate (FDR). A comparative simulation study and an application to neuroimaging real data shows that it is particularly useful in presence of a high number of hypotheses. We also show how stepwise regression may be a special case of Optimal Subset procedures and how to adjust the p-value of the selected model taking into account for the multiplicity arising from the possible different models selected by a stepwise regression.
机译:提出了一种多重控制的新方法(最优子集)。这是基于对产生最小p值的部分(单变量)假设的最佳子集的选择。在这项工作中,我们展示了如何在置换框架中执行此新过程,选择合适的组合函数和置换策略。最佳子集方法在探索性研究中可能非常有用,因为它对多重性执行了弱控制,这可能是错误发现率(FDR)的有效替代方法。一项比较模拟研究及其在神经成像实际数据中的应用表明,在存在大量假设的情况下,它特别有用。我们还将展示逐步回归如何可能是最优子集程序的一种特殊情况,以及如何考虑到由逐步回归选择的可能不同模型引起的多重性,如何调整所选模型的p值。

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