Canonical dual solutions to quadratic optimization over one quadratic constraint
Xing Wenxun
Fang Shu-Cherng
Sheu Ruey-Lin
Zhang Li
· 2015
期刊名称:
Asia-Pacific Journal of Operational Research
2015 年
32 卷
1 期
摘要:
A quadratic optimization problem with one nonconvex quadratic constraint is studied using the canonical dual approach. Under the dual Slater's condition, we show that the canonical dual has a smooth concave objective function over a convex feasible domain, and this dual has a finite supremum unless the original quadratic optimization problem is infeasible. This supremum, when it exists, always equals to the minimum value of the primal problem. Moreover, a global minimizer of the primal problem can be provided by a dual-to-primal conversion plus a "boundarification" technique. Application to solving a quadratic programming problem over a ball is included and an error bound estimation is provided.