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Title: A smoothing proximal gradient algorithm for nonsmooth convex regression with cardinality penalty
Authors: Bian, W
Chen, X 
Issue Date: 2020
Source: SIAM journal on numerical analysis, 2020, v. 58, no. 1, p. 858-883
Abstract: In this paper, we focus on the constrained sparse regression problem, where the loss function is convex but nonsmooth and the penalty term is defined by the cardinality function. First, we give an exact continuous relaxation problem in the sense that both problems have the same optimal solution set. Moreover, we show that a vector is a local minimizer with the lower bound property of the original problem if and only if it is a lifted stationary point of the relaxation problem. Second, we propose a smoothing proximal gradient (SPG) algorithm for finding a lifted stationary point of the continuous relaxation model. Our algorithm is a novel combination of the classical proximal gradient algorithm and the smoothing method. We prove that the proposed SPG algorithm globally converges to a lifted stationary point of the relaxation problem, has the local convergence rate of o(k - \tau ) with \tau \in (0, 12) on the objective function value, and identifies the zero entries of the lifted stationary point in finite iterations. Finally, we use three examples to illustrate the validity of the continuous relaxation model and good numerical performance of the SPG algorithm.
Keywords: Nonsmooth convex regression
Cardinality penalty
Proximal gradient method
Smoothing method
Global sequence convergence
Publisher: Society for Industrial and Applied Mathematics
Journal: SIAM journal on numerical analysis 
ISSN: 0036-1429
EISSN: 1095-7170
DOI: 10.1137/18M1186009
Rights: © 2020 Society for Industrial and Applied Mathematics
The following publication Bian, W., & Chen, X. (2020). A smoothing proximal gradient algorithm for nonsmooth convex regression with cardinality penalty. SIAM Journal on Numerical Analysis, 58(1), 858-883 is available at https://doi.org/10.1137/18M1186009.
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