2019
DOI: 10.48550/arxiv.1904.04664
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Sparse Laplacian Shrinkage with the Graphical Lasso Estimator for Regression Problems

Abstract: This paper considers a high-dimensional linear regression problem where there are complex correlation structures among predictors. We propose a graph-constrained regularization procedure, named Sparse Laplacian Shrinkage with the Graphical Lasso Estimator (SLS-GLE). The procedure uses the estimated precision matrix to describe the specific information on the conditional dependence pattern among predictors, and encourages both sparsity on the regression model and the graphical model. We introduce the Laplacian … Show more

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