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Oracle and Adaptive Compound Decision Rules for False Discovery Rate Control

机译:用于错误发现率控制的Oracle和自适应复合决策规则

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摘要

We develop a compound decision theory framework for multiple-testing problems and derive an oracle rule based on the z values that minimizes the false nondiscovery rate (FNR) subject to a constraint on the false discovery rate (FDR). We show that many commonly used multiple-testing procedures, which are p value-based, are inefficient, and propose an adaptive procedure based on the z values. The z value-based adaptive procedure asymptotically attains the performance of the z value oracle procedure and is more efficient than the conventional p value-based methods. We investigate the numerical performance of the adaptive procedure using both simulated and real data. In particular, we demonstrate our method in an analysis of the microarray data from a human immunodeficiency virus study that involves testing a large number of hypotheses simultaneously.
机译:我们开发了用于多重测试问题的复合决策理论框架,并基于z值推导了一个Oracle规则,该规则将对错误发现率(FDR)进行约束的错误未发现率(FNR)最小化。我们表明,许多常用的基于p值的多重测试过程效率低下,并提出了基于z值的自适应过程。基于z值的自适应过程渐近地实现了z值预言过程的性能,并且比常规的基于p值的方法更有效。我们使用模拟和实际数据研究自适应过程的数值性能。特别是,我们在人类免疫缺陷病毒研究的微阵列数据分析中证明了我们的方法,该研究涉及同时测试大量假设。

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