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Lagrange multiplier necessary conditions for global optimality for non-convex minimization over a quadratic constraint via S-lemma

机译:拉格朗日乘子的全局最优条件,用于通过S-lemma在二次约束上进行非凸最小化

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摘要

In this paper, we present Lagrange multiplier necessary conditions for global optimality that apply to non-convex optimization problems beyond quadratic optimization problems subject to a single quadratic constraint. In particular, we show that our optimality conditions apply to problems where the objective function is the difference of quadratic and convex functions over a quadratic constraint, and to certain class of fractional programming problems. Our necessary conditions become necessary and sufficient conditions for global optimality for quadratic minimization subject to quadratic constraint. As an application, we also obtain global optimality conditions for a class of trust-region problems. Our approach makes use of outer-estimators, and the powerful S-lemma which has played key role in control theory and semidefinite optimization. We discuss numerical examples to illustrate the significance of our optimality conditions.
机译:在本文中,我们提出了全局最优性的Lagrange乘子必要条件,该条件适用于非凸优化问题,而不是受单个二次约束约束的二次优化问题。特别是,我们证明了我们的最优性条件适用于目标函数为二次约束上二次函数和凸函数之差的问题,以及某些分数阶规划问题。我们的必要条件成为受二次约束约束的二次最小化全局最优的充要条件。作为应用,我们还获得了一类信任区域问题的全局最优条件。我们的方法利用了外部估计器和强大的S引理,该引理在控制理论和半确定性优化中发挥了关键作用。我们讨论了数值示例,以说明我们的最优性条件的重要性。

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