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Control of the False Discovery Rate under Dependence using the Bootstrap and Subsampling

机译:使用Bootstrap和二次采样在依赖关系下控制错误发现率

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摘要

This paper considers the problem of testing s null hypotheses simultaneously while controlling the false discovery rate (FDR). Benjamini and Hochberg (1995) provide a method for controlling the FDR based on p-values for each of the null hypotheses under the assumption that the p-values are independent. Subsequent research has since shown that this procedure is valid under weaker assumptions on the joint distribution of the p-values. Related procedures that are valid under no assumptions on the joint distribution of the p-values have also been developed. None of these procedures, however, incorporate information about the dependence structure of the test statistics. This paper develops methods for control of the FDR under weak assumptions that incorporate such information and, by doing so, are better able to detect false null hypotheses. We illustrate this property via a simulation study and two empirical applications. In particular, the bootstrap method is competitive with methods that require independence if independence holds, but it outperforms these methods under dependence.
机译:本文考虑了在控制错误发现率(FDR)的同时测试零假设的问题。 Benjamini和Hochberg(1995)在假设p值独立的情况下,为每个原假设提供了一种基于p值控制FDR的方法。此后的后续研究表明,在对p值的联合分布的较弱假设下,此过程有效。还开发了在不假设p值联合分布的情况下有效的相关程序。但是,这些过程均未包含有关测试统计信息的依存结构的信息。本文开发了在弱假设下控制FDR的方法,这些方法结合了这些信息,因此可以更好地检测假零假设。我们通过仿真研究和两个经验应用来说明此属性。特别是,引导法与需要保持独立性的方法(如果保持独立性)具有竞争性,但是在依赖项下它的性能优于这些方法。

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