English

Algorithms to solve unbounded convex vector optimization problems

Optimization and Control 2023-01-24 v3

Abstract

This paper is concerned with solution algorithms for general convex vector optimization problems (CVOPs). So far, solution concepts and approximation algorithms for solving CVOPs exist only for bounded problems [Ararat et al. 2022, Doerfler et al. 2021, Loehne et al. 2014]. They provide a polyhedral inner and outer approximation of the upper image that have a Hausdorff distance of at most ε\varepsilon. However, it is well known (see [Ulus, 2018]), that for some unbounded problems such polyhedral approximations do not exist. In this paper, we will propose a generalized solution concept, called an (ε,δ)(\varepsilon,\delta)--solution, that allows also to consider unbounded CVOPs. It is based on additionally bounding the recession cones of the inner and outer polyhedral approximations of the upper image in a meaningful way. An algorithm is proposed that computes such δ\delta--outer and δ\delta--inner approximations of the recession cone of the upper image. In combination with the results of [Loehne et al. 2014] this provides a primal and a dual algorithm that allow to compute (ε,δ)(\varepsilon,\delta)--solutions of (potentially unbounded) CVOPs. Numerical examples are provided.

Keywords

Cite

@article{arxiv.2207.03200,
  title  = {Algorithms to solve unbounded convex vector optimization problems},
  author = {Andrea Wagner and Firdevs Ulus and Birgit Rudloff and Gabriela Kováčová and Niklas Hey},
  journal= {arXiv preprint arXiv:2207.03200},
  year   = {2023}
}