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A General Framework For Multiple Testing Dependence

机译:多重测试依赖关系的通用框架

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摘要

We develop a general framework for performing large-scale significance testing in the presence of arbitrarily strong dependence. We derive a low-dimensional set of random vectors, called a dependence kernel, that fully captures the dependence structure in an observed high-dimensional dataset. This result shows a surprising reversal of the "curse of dimensionality" in the high-dimensional hypothesis testing setting. We show theoretically that conditioning on a dependence kernel is sufficient to render statistical tests independent regardless of the level of dependence in the observed data. This framework for multiple testing dependence has implications in a variety of common multiple testing problems, such as in gene expression studies, brain imaging, and spatial epidemiology.
机译:我们开发了一个通用框架,用于在任意强依赖性的情况下执行大规模重要性测试。我们推导了一个低维的随机向量集,称为依赖项内核,它可以完全捕获观察到的高维数据集中的依赖项结构。该结果显示了高维假设检验设置中“维数诅咒”的惊人反转。我们从理论上证明,对依赖项内核的条件足以使统计测试独立,而与观察数据中的依赖项级别无关。多重测试依赖性的这种框架在各种常见的多重测试问题中具有影响,例如在基因表达研究,脑成像和空间流行病学中。

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