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Inequalities for the false discovery rate (FDR) under dependence

机译:依赖条件下的错误发现率(FDR)不平等

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Inequalities are key tools to prove FDR control of a multiple test. The present paper studies upper and lower bounds for the FDR under various dependence structures of $p$-values, namely independence, reverse martingale dependence and positive regression dependence on the subset (PRDS) of true null hypotheses. The inequalities are based on exact finite sample formulas which are also of interest for independent uniformly distributed $p$-values under the null. As applications the asymptotic worst case FDR of step up and step down tests coming from an non-decreasing rejection curve is established. In addition, new step up tests are established and necessary conditions for the FDR control are discussed. The reverse martingale models yield sharper FDR results than the PRDS models. Already in certain multivariate normal dependence models the familywise error rate of the Benjamini Hochberg step up test can be different from the desired level $lpha$. The second part of the paper is devoted to adaptive step up tests under dependence. The well-known Storey estimator is modified so that the corresponding step up test has finite sample control for various block wise dependent $p$-values. These results may be applied to dependent genome data. Within each chromosome the $p$-values may be reverse martingale dependent while the chromosomes are independent.
机译:不等式是证明FDR控制多重测试的关键工具。本文研究了$ p $值的各种依赖结构下FDR的上下限,即独立性,反向reverse依赖和对真实无效假设子集(PRDS)的正回归依赖。不等式基于精确的有限样本公式,这对于空值下独立均匀分布的$ p $值也很重要。作为应用,建立了来自非递减抑制曲线的渐进和渐进测试的渐近最坏情况FDR。此外,建立了新的加速测试并讨论了FDR控制的必要条件。反向mar模型比PRDS模型产生更清晰的FDR结果。在某些多元正态相关性模型中,Benjamini Hochberg逐步检验的家庭错误率可能与所需的水平 alpha $不同。本文的第二部分专门介绍依赖项下的自适应升压测试。修改了著名的Storey估计器,以便对各种依赖于块的$ p $值,相应的升压测试具有有限的样本控制。这些结果可以应用于相关的基因组数据。在每个染色体内,$ p $值可能与逆mar相关,而染色体是独立的。

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