Regression-Based Bayesian Estimation and Structure Learning for Nonparanormal Graphical Models.

Bayesian inference Cholesky decomposition continuous shrinkage prior nonparanormal graphical models

Journal

Statistical analysis and data mining
ISSN: 1932-1864
Titre abrégé: Stat Anal Data Min
Pays: United States
ID NLM: 101492808

Informations de publication

Date de publication:
Oct 2022
Historique:
entrez: 12 9 2022
pubmed: 13 9 2022
medline: 13 9 2022
Statut: ppublish

Résumé

A nonparanormal graphical model is a semiparametric generalization of a Gaussian graphical model for continuous variables in which it is assumed that the variables follow a Gaussian graphical model only after some unknown smooth monotone transformations. We consider a Bayesian approach to inference in a nonparanormal graphical model in which we put priors on the unknown transformations through a random series based on B-splines. We use a regression formulation to construct the likelihood through the Cholesky decomposition on the underlying precision matrix of the transformed variables and put shrinkage priors on the regression coefficients. We apply a plug-in variational Bayesian algorithm for learning the sparse precision matrix and compare the performance to a posterior Gibbs sampling scheme in a simulation study. We finally apply the proposed methods to a microarray data set. The proposed methods have better performance as the dimension increases, and in particular, the variational Bayesian approach has the potential to speed up the estimation in the Bayesian nonparanormal graphical model without the Gaussianity assumption while retaining the information to construct the graph.

Identifiants

pubmed: 36090618
doi: 10.1002/sam.11576
pmc: PMC9455150
mid: NIHMS1780294
doi:

Types de publication

Journal Article

Langues

eng

Pagination

611-629

Subventions

Organisme : NIGMS NIH HHS
ID : T32 GM081057
Pays : United States

Déclaration de conflit d'intérêts

Conflict of interest The authors declare no potential conflict of interests.

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Auteurs

Jami J Mulgrave (JJ)

Department of Statistics, North Carolina State University, North Carolina, USA.

Subhashis Ghosal (S)

Department of Statistics, North Carolina State University, North Carolina, USA.

Classifications MeSH