We present an objective Bayes method for covariance selection in Gaussian multivariate regression models having a sparse regression and covariance structure, the latter being Markov with respect to a directed acyclic graph (DAG). Our procedure can be easily complemented with a variable selection step, so that variable and graphical model selection can be performed jointly. In this way, we offer a solution to a problem of growing importance especially in the area of genetical genomics (eQTL analysis). The input of our method is a single default prior, essentially involving no subjective elicitation, while its output is a closed form marginal likelihood for every covariate-adjusted DAG model, which is constant over each class of Markov equivalent DAGs; our procedure thus naturally encompasses covariate-adjusted decomposable graphical models. In realistic experimental studies, our method is highly competitive, especially when the number of responses is large relative to the sample size.

Objective Bayes Covariate-Adjusted Sparse Graphical Model Selection / Consonni, Guido; LA ROCCA, Luca; Peluso, Stefano. - In: SCANDINAVIAN JOURNAL OF STATISTICS. - ISSN 0303-6898. - 44:3(2017), pp. 741-764. [10.1111/sjos.12273]

Objective Bayes Covariate-Adjusted Sparse Graphical Model Selection

LA ROCCA, Luca;
2017

Abstract

We present an objective Bayes method for covariance selection in Gaussian multivariate regression models having a sparse regression and covariance structure, the latter being Markov with respect to a directed acyclic graph (DAG). Our procedure can be easily complemented with a variable selection step, so that variable and graphical model selection can be performed jointly. In this way, we offer a solution to a problem of growing importance especially in the area of genetical genomics (eQTL analysis). The input of our method is a single default prior, essentially involving no subjective elicitation, while its output is a closed form marginal likelihood for every covariate-adjusted DAG model, which is constant over each class of Markov equivalent DAGs; our procedure thus naturally encompasses covariate-adjusted decomposable graphical models. In realistic experimental studies, our method is highly competitive, especially when the number of responses is large relative to the sample size.
2017
29-mar-2017
44
3
741
764
Objective Bayes Covariate-Adjusted Sparse Graphical Model Selection / Consonni, Guido; LA ROCCA, Luca; Peluso, Stefano. - In: SCANDINAVIAN JOURNAL OF STATISTICS. - ISSN 0303-6898. - 44:3(2017), pp. 741-764. [10.1111/sjos.12273]
Consonni, Guido; LA ROCCA, Luca; Peluso, Stefano
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1132438
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