A Cyclic Coordinate Descent Algorithm for lq Regularization
Optimization and Control
2014-08-05 v1
Abstract
In recent studies on sparse modeling, () regularization has received considerable attention due to its superiorities on sparsity-inducing and bias reduction over the regularization.In this paper, we propose a cyclic coordinate descent (CCD) algorithm for regularization. Our main result states that the CCD algorithm converges globally to a stationary point as long as the stepsize is less than a positive constant. Furthermore, we demonstrate that the CCD algorithm converges to a local minimizer under certain additional conditions. Our numerical experiments demonstrate the efficiency of the CCD algorithm.
Keywords
Cite
@article{arxiv.1408.0578,
title = {A Cyclic Coordinate Descent Algorithm for lq Regularization},
author = {Jinshan Zeng and Zhimin Peng and Shaobo Lin and Zongben Xu},
journal= {arXiv preprint arXiv:1408.0578},
year = {2014}
}
Comments
13 pages, 2 figures