4.6 Article

SCALABLE ALGORITHMS FOR THE SPARSE RIDGE REGRESSION

Journal

SIAM JOURNAL ON OPTIMIZATION
Volume 30, Issue 4, Pages 3359-3386

Publisher

SIAM PUBLICATIONS
DOI: 10.1137/19M1245414

Keywords

approximation algorithm; chance constraint; conic program; mixed integer; ridge regression

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Sparse regression and variable selection for large-scale data have been rapidly developed in the past decades. This work focuses on sparse ridge regression, which enforces the sparsity by use of the L-0 norm. We first prove that the continuous relaxation of the mixed integer second order conic (MISOC) reformulation using perspective formulation is equivalent to that of the convex integer formulation proposed in recent work. We also show that the convex hull of the constraint system of the MISOC formulation is equal to its continuous relaxation. Based upon these two formulations (i.e., the MISOC formulation and convex integer formulation), we analyze two scalable algorithms, the greedy and randomized algorithms, for sparse ridge regression with desirable theoretical properties. The proposed algorithms are proved to yield near-optimal solutions under mild conditions. We further propose integrating the greedy algorithm with the randomized algorithm, which can greedily search the features from the nonzero subset identified by the continuous relaxation of the MISOC formulation. The merits of the proposed methods are illustrated through numerical examples in comparison with several existing ones.

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