Subset Selection with Shrinkage: Sparse Linear Modeling When the SNR Is Low

Published Online:https://doi.org/10.1287/opre.2022.2276

We study a seemingly unexpected and relatively less understood overfitting aspect of a fundamental tool in sparse linear modeling—best subset selection—which minimizes the residual sum of squares subject to a constraint on the number of nonzero coefficients. Whereas the best subset selection procedure is often perceived as the “gold standard” in sparse learning when the signal-to-noise ratio (SNR) is high, its predictive performance deteriorates when the SNR is low. In particular, it is outperformed by continuous shrinkage methods, such as ridge regression and the Lasso. We investigate the behavior of best subset selection in the high-noise regimes and propose an alternative approach based on a regularized version of the least-squares criterion. Our proposed estimators (a) mitigate, to a large extent, the poor predictive performance of best subset selection in the high-noise regimes; and (b) perform favorably, while generally delivering substantially sparser models, relative to the best predictive models available via ridge regression and the Lasso. We conduct an extensive theoretical analysis of the predictive properties of the proposed approach and provide justification for its superior predictive performance relative to best subset selection when the noise level is high. Our estimators can be expressed as solutions to mixed-integer second-order conic optimization problems and, hence, are amenable to modern computational tools from mathematical optimization.

Funding: R. Mazumder acknowledges research funding from the Office of Naval Research [Grants N000141512342 and N000141812298] and the National Science Foundation [Grant NSF-IIS-1718258].

Supplemental Material: The e-companion is available at https://doi.org/10.1287/opre.2022.2276.

INFORMS site uses cookies to store information on your computer. Some are essential to make our site work; Others help us improve the user experience. By using this site, you consent to the placement of these cookies. Please read our Privacy Statement to learn more.