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Generalized S-Lemma and strong duality in nonconvex quadratic programming

机译:非凸二次规划中的广义S-引理和强对偶

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摘要

On the basis of a new topological minimax theorem, a simple and unified approach is developed to Lagrange duality in nonconvex quadratic programming. Diverse generalizations as well as equivalent forms of the S-Lemma, providing a thorough study of duality for single constrained quadratic optimization, are derived along with new strong duality conditions for multiple constrained quadratic optimization. The results allow many quadratic programs to be solved by solving one or just a few SDP's (semidefinite programs) of about the same size, rather than solving a sequence, often infinite, of SDP's or linear programs of a very large size as in most existing methods.
机译:在新的拓扑极小极大定理的基础上,开发了一种简单且统一的方法来求解非凸二次规划中的拉格朗日对偶性。 S-引理的各种推广以及等效形式为单约束二次优化提供了对偶性的深入研究,并为多重约束二次优化提供了新的强对偶条件。结果允许通过求解一个或几个大约相同大小的SDP(半有限程序)来解决许多二次程序,而不是像大多数现有方法那样求解一个序列(通常是无限个)的SDP或非常大的线性程序方法。

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