Computing the recession cone of a convex upper image via convex projection
Creators
- 1. Univ Calif Los Angeles, Dept Math, Los Angeles, CA 90095 USA
- 2. Bilkent Univ, Dept Ind Engn, TR-06800 Ankara, Turkiye
Description
It is possible to solve unbounded convex vector optimization problems (CVOPs) in two phases: (1) computing or approximating the recession cone of the upper image and (2) solving the equivalent bounded CVOP where the ordering cone is extended based on the first phase. In this paper, we consider unbounded CVOPs and propose an alternative solution methodology to compute or approximate the recession cone of the upper image. In particular, we relate the dual of the recession cone with the Lagrange dual of weighted sum scalarization problems whenever the dual problem can be written explicitly. Computing this set requires solving a convex (or polyhedral) projection problem. We show that this methodology can be applied to semidefinite, quadratic, and linear vector optimization problems and provide some numerical examples.
Files
bib-77af9677-1a13-4b3c-9457-23456e17b72c.txt
Files
(158 Bytes)
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