A primal-dual flow for affine constrained convex optimization
Abstract
We introduce a novel primal-dual flow for affine constrained convex optimization problems. As a modification of the standard saddle-point system, our primal-dual flow is proved to possess the exponential decay property, in terms of a tailored Lyapunov function. Then two primal-dual methods are obtained from numerical discretizations of the continuous model, and global nonergodic linear convergence rate is established via a discrete Lyapunov function. Instead of solving the subproblem of the primal variable, we apply the semi-smooth Newton iteration to the subproblem with respect to the multiplier, provided that there are some additional properties such as semi-smoothness and sparsity. Especially, numerical tests on the linearly constrained - minimization and the total-variation based image denoising model have been provided.
Cite
@article{arxiv.2103.06636,
title = {A primal-dual flow for affine constrained convex optimization},
author = {Hao Luo},
journal= {arXiv preprint arXiv:2103.06636},
year = {2022}
}