2022
DOI: 10.48550/arxiv.2201.05653
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A generalized likelihood based Bayesian approach for scalable joint regression and covariance selection in high dimensions

Abstract: The paper addresses joint sparsity selection in the regression coefficient matrix and the error precision (inverse covariance) matrix for high-dimensional multivariate regression models in the Bayesian paradigm. The selected sparsity patterns are crucial to help understand the network of relationships between the predictor and response variables, as well as the conditional relationships among the latter. While Bayesian methods have the advantage of providing natural uncertainty quantification through posterior… Show more

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