Variable Selection in Regression Mixture Modeling for the Discovery of Gene Regulatory Networks
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Publication:3632556
DOI10.1198/016214507000000068zbMath1469.62369OpenAlexW2031644101MaRDI QIDQ3632556
Mayetri Gupta, Joseph G. Ibrahim
Publication date: 12 June 2009
Published in: Journal of the American Statistical Association (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.1198/016214507000000068
importance samplinghierarchical modelBayesian model selectionevolutionary Monte Carlomotif discoverytranscription regulation
Applications of statistics to biology and medical sciences; meta analysis (62P10) Bayesian inference (62F15)
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