English

Unconstrained optimization using the directional proximal point method

Optimization and Control 2022-04-29 v1

Abstract

This paper presents a directional proximal point method (DPPM) to derive the minimum of any C1-smooth function f. The proposed method requires a function persistent a local convex segment along the descent direction at any non-critical point (referred to a DLC direction at the point). The proposed DPPM can determine a DLC direction by solving a two-dimensional quadratic optimization problem, regardless of the dimensionally of the function variables. Along that direction, the DPPM then updates by solving a one-dimensional optimization problem. This gives the DPPM advantage over competitive methods when dealing with large-scale problems, involving a large number of variables. We show that the DPPM converges to critical points of f. We also provide conditions under which the entire DPPM sequence converges to a single critical point. For strongly convex quadratic functions, we demonstrate that the rate at which the error sequence converges to zero can be R-superlinear, regardless of the dimension of variables.

Keywords

Cite

@article{arxiv.2204.13370,
  title  = {Unconstrained optimization using the directional proximal point method},
  author = {Ming-Yu Chung and Jinn Ho and Wen-Liang Hwang},
  journal= {arXiv preprint arXiv:2204.13370},
  year   = {2022}
}

Comments

29 pages, 12 figures