2021
DOI: 10.48550/arxiv.2107.03325
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Robust Variable Selection and Estimation Via Adaptive Elastic Net S-Estimators for Linear Regression

Abstract: Heavy-tailed error distributions and predictors with anomalous values are ubiquitous in high-dimensional regression problems and can seriously jeopardize the validity of statistical analyses if not properly addressed. For more reliable estimation under these adverse conditions, we propose a new robust regularized estimator for simultaneous variable selection and coefficient estimation. This estimator, called adaptive PENSE, possesses the oracle property without prior knowledge of the scale of the residuals and… Show more

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