English

Path Following and Empirical Bayes Model Selection for Sparse Regression

Computation 2012-01-18 v1 Methodology

Abstract

In recent years, a rich variety of regularization procedures have been proposed for high dimensional regression problems. However, tuning parameter choice and computational efficiency in ultra-high dimensional problems remain vexing issues. The routine use of 1\ell_1 regularization is largely attributable to the computational efficiency of the LARS algorithm, but similar efficiency for better behaved penalties has remained elusive. In this article, we propose a highly efficient path following procedure for combination of any convex loss function and a broad class of penalties. From a Bayesian perspective, this algorithm rapidly yields maximum a posteriori estimates at different hyper-parameter values. To bypass the inefficiency and potential instability of cross validation, we propose an empirical Bayes procedure for rapidly choosing the optimal model and corresponding hyper-parameter value. This approach applies to any penalty that corresponds to a proper prior distribution on the regression coefficients. While we mainly focus on sparse estimation of generalized linear models, the method extends to more general regularizations such as polynomial trend filtering after reparameterization. The proposed algorithm scales efficiently to large pp and/or nn. Solution paths of 10,000 dimensional examples are computed within one minute on a laptop for various generalized linear models (GLM). Operating characteristics are assessed through simulation studies and the methods are applied to several real data sets.

Keywords

Cite

@article{arxiv.1201.3528,
  title  = {Path Following and Empirical Bayes Model Selection for Sparse Regression},
  author = {Hua Zhou and Artin Armagan and David B. Dunson},
  journal= {arXiv preprint arXiv:1201.3528},
  year   = {2012}
}

Comments

35 pages, 13 figures

R2 v1 2026-06-21T20:05:41.649Z