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Sparse optimization for nonconvex group penalized estimation

Title
Sparse optimization for nonconvex group penalized estimation
Author(s)

Sangin Lee ; Oh, Miae ; Yongdai Kim

Keyword
concave convex procedure ; group LASSO ; nonconvex penalty ; variable selection
Publication Year
2015-03-30
Publisher
Taylor & Francis
Citation
Journal of Statistical Computation and Simulation, vol. 86, no. 3, pp. 597 - 610
Abstract
We consider a linear regression model where there are group structures in covariates. The group LASSO has been proposed for group variable selections. Many nonconvex penalties such as smoothly clipped absolute deviation and minimax concave penalty were extended to group variable selection problems. The group coordinate descent (GCD) algorithm is used popularly for fitting these models. However, the GCD algorithms are hard to be applied to nonconvex group penalties due to computational complexity unless the design matrix is orthogonal. In this paper, we propose an efficient optimization algorithm for nonconvex group penalties by combining the concave convex procedure and the group LASSO algorithm. We also extend the proposed algorithm for generalized linear models. We evaluate numerical efficiency of the proposed algorithm compared to existing GCD algorithms through simulated data and real data sets.
ISSN
0094-9655
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