Simultaneous inference for multiple testing and clustering via a Dirichlet process mixture model Journal Article


Authors: Dahl, D. B.; Mo, Q.; Vannucci, M.
Article Title: Simultaneous inference for multiple testing and clustering via a Dirichlet process mixture model
Abstract: We propose a Bayesian nonparametric regression model that exploits clustering for increased sensitivity in multiple hypothesis testing. We build on the recently proposed BEMMA (Bayesian Effects Models for Microarrays) method which is able to model dependence among objects through clustering and then estimates hypothesis-testing parameters averaged over clustering uncertainty. We propose several improvements. First, we separate the clustering of the regression coefficients from the part of the model that accommodates heteroscedasticity. Second, our model accommodates a wider class of experimental designs, such aspermitting covariates and not requiring independent sampling. Third, we provide amore satisfactory treatment of nuisance parameters and some hyperparameters. Finally, we do not require the arbitrary designation of a reference treatment. The proposed method is compared in a simulation study to ANOVA and the BEMMA methods. © 2008 SAGE Publications.
Keywords: bayesian nonparametrics; correlated hypothesis tests; model-based clustering; multiple comparisons
Journal Title: Statistical Modelling
Volume: 8
Issue: 1
ISSN: 1471-082X
Publisher: Sage Publications  
Date Published: 2008-01-01
Start Page: 23
End Page: 39
Language: English
DOI: 10.1177/1471082x0700800103
PROVIDER: scopus
DOI/URL:
Notes: --- - "Cited By (since 1996): 2" - "Export Date: 17 November 2011" - "Source: Scopus"
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  1. Qianxing Mo
    37 Mo