Structural learning of Gaussian graphical models from microarray data with p larger than n

Learning of large-scale networks of interactions from microarray data is an important and challenging problem in bioinformatics. A widely used approach is to assume that the available data constitute a random sample from a multivariate distribution belonging to a Gaussian graphical model. As a conse...

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Main Authors: Alberto Roverato, Robert Castelo
Format: Article
Language:English
Published: University of Bologna 2008-06-01
Series:Statistica
Online Access:http://rivista-statistica.unibo.it/article/view/1212
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spelling doaj-6691264211164cc78b8a039f0864f3b22020-11-25T00:32:54ZengUniversity of BolognaStatistica0390-590X1973-22012008-06-0166434337210.6092/issn.1973-2201/12121177Structural learning of Gaussian graphical models from microarray data with p larger than nAlberto RoveratoRobert CasteloLearning of large-scale networks of interactions from microarray data is an important and challenging problem in bioinformatics. A widely used approach is to assume that the available data constitute a random sample from a multivariate distribution belonging to a Gaussian graphical model. As a consequence, the prime objects of inference are full-order partial correlations which are partial correlations between two variables given the remaining ones. In the context of microarray data the number of variables exceeds the sample size and this precludes the application of traditional structure learning procedures because a sampling version of full-order partial correlations does not exist. In this paper we introduce a structure learning procedure, that we call the qp-procedure, based on limited-order partial correlations. The procedure is implemented in a freely available package for the statistical software R.http://rivista-statistica.unibo.it/article/view/1212
collection DOAJ
language English
format Article
sources DOAJ
author Alberto Roverato
Robert Castelo
spellingShingle Alberto Roverato
Robert Castelo
Structural learning of Gaussian graphical models from microarray data with p larger than n
Statistica
author_facet Alberto Roverato
Robert Castelo
author_sort Alberto Roverato
title Structural learning of Gaussian graphical models from microarray data with p larger than n
title_short Structural learning of Gaussian graphical models from microarray data with p larger than n
title_full Structural learning of Gaussian graphical models from microarray data with p larger than n
title_fullStr Structural learning of Gaussian graphical models from microarray data with p larger than n
title_full_unstemmed Structural learning of Gaussian graphical models from microarray data with p larger than n
title_sort structural learning of gaussian graphical models from microarray data with p larger than n
publisher University of Bologna
series Statistica
issn 0390-590X
1973-2201
publishDate 2008-06-01
description Learning of large-scale networks of interactions from microarray data is an important and challenging problem in bioinformatics. A widely used approach is to assume that the available data constitute a random sample from a multivariate distribution belonging to a Gaussian graphical model. As a consequence, the prime objects of inference are full-order partial correlations which are partial correlations between two variables given the remaining ones. In the context of microarray data the number of variables exceeds the sample size and this precludes the application of traditional structure learning procedures because a sampling version of full-order partial correlations does not exist. In this paper we introduce a structure learning procedure, that we call the qp-procedure, based on limited-order partial correlations. The procedure is implemented in a freely available package for the statistical software R.
url http://rivista-statistica.unibo.it/article/view/1212
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AT robertcastelo structurallearningofgaussiangraphicalmodelsfrommicroarraydatawithplargerthann
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