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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Optimal detection of weak positive latent dependence between two sequences of multiple tests
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Optimal detection of weak positive latent dependence between two sequences of multiple tests

机译:多次试验序列之间的弱正潜依赖性的最佳检测

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摘要

Abstract It is frequently of interest to jointly analyze two paired sequences of multiple tests. This paper studies the problem of detecting whether there are more pairs of tests that are significant in both sequences than would be expected by chance. The asymptotic detection boundary is derived in terms of parameters such as the sparsity of non-null cases in each sequence, the effect sizes of the signals, and the magnitude of the dependence between the two sequences. A new test for detecting weak dependence is also proposed, shown to be asymptotically adaptively optimal, studied in simulations, and applied to study genetic pleiotropy in 10 pediatric autoimmune diseases. ]]>
机译:<![cdata [ Abstract 常用于共同分析多个测试的两次配对序列。本文研究了检测在两种序列中具有比较显着的测试的问题的问题,而不是偶然的差异。渐近检测边界是在每个序列中的非空案件的稀疏性的参数方面导出的,信号的效果大小以及两个序列之间的依赖性的幅度。还提出了一种检测弱依赖性的新测试,证明是在仿真中进行的渐近自适应最佳的,并应用于10个儿科自身免疫疾病中的遗传胸膜。 ]]>

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