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Resampling-based empirical Bayes multiple testing procedures for controlling generalized tail probability and expected value error rates: focus on the false discovery rate and simulation study

机译:基于重采样的经验贝叶斯多重测试程序,用于控制广义尾部概率和期望值错误率:专注于错误发现率和仿真研究

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This article proposes resampling-based empirical Bayes multiple testing procedures for controlling a broad class of Type I error rates, defined as generalized tail probability (gTP) error rates, gTP (q,g) = Pr(g (V(n),S(n)) > q), and generalized expected value (gEV) error rates, gEV (g) = E [g (V(n),S(n))], for arbitrary functions g (V(n),S(n)) of the numbers of false positives V(n) and true positives S(n). Of particular interest are error rates based on the proportion g (V(n),S(n)) = V(n) /(V(n) + S(n)) of Type I errors among the rejected hypotheses, such as the false discovery rate (FDR), FDR = E [V(n) /(V(n) + S(n))]. The proposed procedures offer several advantages over existing methods. They provide Type I error control for general data generating distributions, with arbitrary dependence structures among variables. Gains in power are achieved by deriving rejection regions based on guessed sets of true null hypotheses and null test statistics randomly sampled from joint distributions that account for the dependence structure of the data. The Type I error and power properties of an FDR-controlling version of the resampling-based empirical Bayes approach are investigated and compared to those of widely-used FDR-controlling linear step-up procedures in a simulation study. The Type I error and power trade-off achieved by the empirical Bayes procedures under a variety of testing scenarios allows this approach to be competitive with or outperform the Storey and Tibshirani (2003) linear step-up procedure, as an alternative to the classical Benjamini and Hochberg (1995) procedure.
机译:本文提出了基于重采样的经验贝叶斯多重测试程序,以控制广泛的I类错误率类别,定义为广义尾部概率(gTP)错误率,gTP(q,g)= Pr(g(V(n),S (n))> q),以及针对任意函数g(V(n),S的广义期望值(gEV)误差率gEV(g)= E [g(V(n),S(n))] (n)个假阳性V(n)和真阳性S(n)的数量。特别令人感兴趣的是基于拒绝假设中I类错误的比例g(V(n),S(n))= V(n)/(V(n)+ S(n))的错误率,例如错误发现率(FDR),FDR = E [V(n)/(V(n)+ S(n))]。与现有方法相比,所提出的程序具有许多优点。它们为一般数据生成分布提供I型错误控制,并在变量之间具有任意依赖关系结构。通过基于猜测的真实无效假设和无效检验统计数据集推导拒绝区域来获得功率增益,该无效假设是从联合分布中随机采样的,这些联合分布说明了数据的依赖性结构。研究了基于重采样的经验贝叶斯方法的FDR控制版本的I型误差和功率特性,并将其与仿真研究中广泛使用的FDR控制线性升压程序的类型和功率特性进行了比较。通过贝叶斯经验程序在各种测试情况下实现的I型误差和功率折衷,可以使该方法与Storey and Tibshirani(2003)线性升压程序相比,具有竞争优势,甚至优于传统的Benjamini和Hochberg(1995)程序。

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