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Activity Number: 651
Type: Contributed
Date/Time: Thursday, August 13, 2015 : 8:30 AM to 10:20 AM
Sponsor: Biometrics Section
Abstract #314734 View Presentation
Title: Optimal Detection of Weak Positive Dependence Between Two Mixture Distributions
Author(s): Sihai Zhao* and Tony Cai and Hongzhe Li
Companies: University of Illinois at Urbana-Champaign and University of Pennsylvania and University of Pennsylvania
Keywords: Dependency detection ; Multiple comparisons ; Signal detection
Abstract:

This paper studies the problem of detecting dependence between two mixture distributions, motivated by questions arising from statistical genomics. The fundamental limits of detecting weak positive dependence are derived and an oracle test statistic is proposed. It is shown that for mixture distributions whose components are stochastically ordered, the oracle test statistic is asymptotically optimal. Connections are drawn between dependency detection and signal detection, where the goal of the latter is to detect the presence of non-null components in a single mixture distribution. It is shown that the oracle test for dependency can also be used as a signal detection procedure in the two-sample setting, and there can achieve detection even when detection using each sample separately is provably impossible. A nonparametric data-adaptive test statistic is then proposed, and its closed-form asymptotic distribution under the null hypothesis of independence is established. In simulations and an application to the analysis of the shared genetic basis of psychiatric disorders, the adaptive test is able to detect genetic relationships not detected by other procedures.


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