Monotonicity for Multiobjective Accelerated Proximal Gradient Methods
Abstract
Accelerated proximal gradient methods, which are also called fast iterative shrinkage-thresholding algorithms (FISTA) are known to be efficient for many applications. Recently, Tanabe et al. proposed an extension of FISTA for multiobjective optimization problems. However, similarly to the single-objective minimization case, the objective functions values may increase in some iterations, and inexact computations of subproblems can also lead to divergence. Motivated by this, here we propose a variant of the FISTA for multiobjective optimization, that imposes some monotonicity of the objective functions values. In the single-objective case, we retrieve the so-called MFISTA, proposed by Beck and Teboulle. We also prove that our method has global convergence with rate , where is the number of iterations, and show some numerical advantages in requiring monotonicity.
Cite
@article{arxiv.2206.04412,
title = {Monotonicity for Multiobjective Accelerated Proximal Gradient Methods},
author = {Yuki Nishimura and Ellen H. Fukuda and Nobuo Yamashita},
journal= {arXiv preprint arXiv:2206.04412},
year = {2023}
}
Comments
- Added new numerical experiments