Regularization vs. Relaxation: A conic optimization perspective of statistical variable selection
Hongbo Dong, Kun Chen, Jeff Linderoth

TL;DR
This paper explores convex relaxations of the l0-norm penalty in variable selection, revealing connections between popular penalties and semidefinite relaxations, and proposing methods for efficient approximate solutions.
Contribution
It introduces a perspective relaxation framework unifying various penalty functions and develops a semidefinite relaxation approach with a rounding procedure for variable selection.
Findings
The perspective relaxation encompasses MCP and reverse Huber penalties.
Semidefinite relaxation provides tight approximations to the l0-norm problem.
Goemans-Williamson rounding yields effective approximate solutions.
Abstract
Variable selection is a fundamental task in statistical data analysis. Sparsity-inducing regularization methods are a popular class of methods that simultaneously perform variable selection and model estimation. The central problem is a quadratic optimization problem with an l0-norm penalty. Exactly enforcing the l0-norm penalty is computationally intractable for larger scale problems, so dif- ferent sparsity-inducing penalty functions that approximate the l0-norm have been introduced. In this paper, we show that viewing the problem from a convex relaxation perspective offers new insights. In particular, we show that a popular sparsity-inducing concave penalty function known as the Minimax Concave Penalty (MCP), and the reverse Huber penalty derived in a recent work by Pilanci, Wainwright and Ghaoui, can both be derived as special cases of a lifted convex relaxation called the…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Statistical Methods and Inference · Machine Learning and Algorithms
