Title
Penalized Semidefinite Programming for Quadratically-Constrained Quadratic Optimization
Abstract
In this paper, we give a new penalized semidefinite programming approach for non-convex quadratically-constrained quadratic programs (QCQPs). We incorporate penalty terms into the objective of convex relaxations in order to retrieve feasible and near-optimal solutions for non-convex QCQPs. We introduce a generalized linear independence constraint qualification (GLICQ) criterion and prove that any GLICQ regular point that is sufficiently close to the feasible set can be used to construct an appropriate penalty term and recover a feasible solution. Inspired by these results, we develop a heuristic sequential procedure that preserves feasibility and aims to improve the objective value at each iteration. Numerical experiments on large-scale system identification problems as well as benchmark instances from the library of quadratic programming demonstrate the ability of the proposed penalized semidefinite programs in finding near-optimal solutions for non-convex QCQP.
Year
DOI
Venue
2020
10.1007/s10898-020-00918-8
JOURNAL OF GLOBAL OPTIMIZATION
Keywords
DocType
Volume
Semidefinite programming,Non-convex optimization,Non-linear programming,Convex relaxation
Journal
78.0
Issue
ISSN
Citations 
3
0925-5001
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Ramtin Madani1357.99
Mohsen Kheirandishfard254.45
Javad Lavaei358771.90
Alper Atamtürk483753.32