A unified approach to model selection and sparse recovery using regularized least squares

Citation
Lv, Jinchi et Fan, Yingying, A unified approach to model selection and sparse recovery using regularized least squares, Annals of statistics , 37(6A), 2009, pp. 3498-3528
Journal title
ISSN journal
00905364
Volume
37
Issue
6A
Year of publication
2009
Pages
3498 - 3528
Database
ACNP
SICI code
Abstract
Model selection and sparse recovery are two important problems for which many regularization methods have been proposed. We study the properties of regularization methods in both problems under the unified framework of regularized least squares with concave penalties. For model selection, we establish conditions under which a regularized least squares estimator enjoys a nonasymptotic property, called the weak oracle property, where the dimensionality can grow exponentially with sample size. For sparse recovery, we present a sufficient condition that ensures the recoverability of the sparsest solution. In particular, we approach both problems by considering a family of penalties that give a smooth homotopy between L0 and L1 penalties. We also propose the sequentially and iteratively reweighted squares (SIRS) algorithm for sparse recovery. Numerical studies support our theoretical results and demonstrate the advantage of our new methods for model selection and sparse recovery.