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Dual Semidefinite Programs Without Duality Gaps for a Class of Convex Minimax Programs

机译:一类凸Minimax程序的无对偶间隙的对偶半定程序

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In this paper, we introduce a new dual program, which is representable as a semidefinite linear programming problem, for a primal convex minimax programming problem, and we show that there is no duality gap between the primal and the dual whenever the functions involved are sum-of-squares convex polynomials. Under a suitable constraint qualification, we derive strong duality results for this class of minimax problems. Consequently, we present applications of our results to robust sum-of-squares convex programming problems under data uncertainty and to minimax fractional programming problems with sum-of-squares convex polynomials.We obtain these results by first establishing sum-of-squares polynomial representations of non-negativity of a convex max function over a system of sum-of-squares convex constraints. The new class of sum-of-squares convex polynomials is an important subclass of convex polynomials and it includes convex quadratic functions and separable convex polynomials. The sum-of-squares convexity of polynomials can numerically be checked by solving semidefinite programming problems whereas numerically verifying convexity of polynomials is generally very hard.
机译:在本文中,我们引入了一个新的对偶程序,它可表示为半凸线性极大极小规划问题,它可以表示为半定线性规划问题,并且我们证明,只要涉及的函数求和,在对偶和双对数之间就不会存在对偶间隙平方凸多项式。在适当的约束条件下,我们导出此类极小极大问题的强对偶结果。因此,我们将结果应用于数据不确定性下的鲁棒平方和凸规划问题以及平方和凸多项式的极小分数规划问题。我们首先通过建立平方和多项式表示来获得这些结果平方和凸约束的系统上凸极大函数的非负性的证明。平方和的新凸多项式是凸多项式的重要子类,它包括凸二次函数和可分离的凸多项式。多项式的平方和凸性可以通过解决半定规划问题来进行数值检查,而对多项式的凸性进行数值验证通常非常困难。

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