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Non-convex quadratic minimization problems with quadratic constraints: global optimality conditions

机译:具有二次约束的非凸二次最小化问题:全局最优性条件

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摘要

In this paper, we first examine how global optimality of non-convex constrained optimization problems is related to Lagrange multiplier conditions. We then establish Lagrange multiplier conditions for global optimality of general quadratic minimization problems with quadratic constraints. We also obtain necessary global optimality conditions, which are different from the Lagrange multiplier conditions for special classes of quadratic optimization problems. These classes include weighted least squares with ellipsoidal constraints, and quadratic minimization with binary constraints. We discuss examples which demonstrate that our optimality conditions can effectively be used for identifying global minimizers of certain multi-extremal non-convex quadratic optimization problems.
机译:在本文中,我们首先研究了非凸约束优化问题的全局最优性与拉格朗日乘子条件如何相关。然后,我们为具有二次约束的一般二次最小化问题的全局最优性建立了Lagrange乘子条件。我们还获得了必要的全局最优性条件,该条件不同于特殊类别的二次优化问题的拉格朗日乘数条件。这些类包括具有椭圆形约束的加权最小二乘和具有二进制约束的二次最小化。我们讨论的例子表明,我们的最优性条件可以有效地用于识别某些多极值非凸二次优化问题的全局极小值。

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