A dual algorithm for a class of augmented convex models
Optimization and Control
2013-08-30 v1 Information Theory
math.IT
Abstract
Convex optimization models find interesting applications, especially in signal/image processing and compressive sensing. We study some augmented convex models, which are perturbed by strongly convex functions, and propose a dual gradient algorithm. The proposed algorithm includes the linearized Bregman algorithm and the singular value thresholding algorithm as special cases. Based on fundamental properties of proximal operators, we present a concise approach to establish the convergence of both primal and dual sequences, improving the results in the existing literature.
Cite
@article{arxiv.1308.6337,
title = {A dual algorithm for a class of augmented convex models},
author = {Hui Zhang and Lizhi Cheng and Wotao Yin},
journal= {arXiv preprint arXiv:1308.6337},
year = {2013}
}
Comments
9 pages, submitted