Robust graphical modeling of gene networks using classical and alternative \(t\)-distributions
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Publication:641155
DOI10.1214/10-AOAS410zbMath1232.62083arXiv1009.3669WikidataQ57566414 ScholiaQ57566414MaRDI QIDQ641155
Mathias Drton, Michael Finegold
Publication date: 21 October 2011
Published in: The Annals of Applied Statistics (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/1009.3669
EM algorithmMarkov chain Monte Carlographical modelrobust inferencemultivariate \(t\)-distributionpenalized likelihood
Multivariate distribution of statistics (62H10) Estimation in multivariate analysis (62H12) Applications of statistics to biology and medical sciences; meta analysis (62P10) Applications of graph theory (05C90) Numerical analysis or methods applied to Markov chains (65C40)
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