Strong Duality in Nonconvex Quadratic Optimization with Two Quadratic Constraints 论文

2006SIAM Journal on Optimization引用 238
Advanced Optimization Algorithms ResearchOptimization and Variational AnalysisSparse and Compressive Sensing Techniques

摘要

We consider the problem of minimizing an indefinite quadratic function subject to two quadratic inequality constraints. When the problem is defined over the complex plane we show that strong duality holds and obtain necessary and sufficient optimality conditions. We then develop a connection between the image of the real and complex spaces under a quadratic mapping, which together with the results in the complex case lead to a condition that ensures strong duality in the real setting. Preliminary numerical simulations suggest that for random instances of the extended trust region subproblem, the sufficient condition is satisfied with a high probability. Furthermore, we show that the sufficient condition is always satisfied in two classes of nonconvex quadratic problems. Finally, we discuss an application of our results to robust least squares problems.