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Global optimality principles for polynomial optimization over box or bivalent constraints by separable polynomial approximations

机译:通过可分离的多项式逼近,对盒或二价约束进行多项式优化的全局最优原理

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In this paper we present necessary conditions for global optimality for polynomial problems with box or bivalent constraints using separable polynomial relaxations. We achieve this by first deriving a numerically checkable characterization of global optimality for separable polynomial problems with box as well as bivalent constraints. Our necessary optimality conditions can be numerically checked by solving semi-definite programming problems. Then, by employing separable polynomial under-estimators, we establish sufficient conditions for global optimality for classes of polynomial optimization problems with box or bivalent constraints. We construct underestimators using the sum of squares convex (SOS-convex) polynomials of real algebraic geometry. An important feature of SOS-convexity that is generally not shared by the standard convexity is that whether a polynomial is SOS-convex or not can be checked by solving a semidefinite programming problem. We illustrate the versatility of our optimality conditions by simple numerical examples.
机译:在本文中,我们提出了使用可分离多项式松弛的具有盒或二价约束的多项式问题的全局最优性的必要条件。我们首先通过对具有箱形和二价约束的可分离多项式问题的全局最优性进行数字可检验的表征来实现这一目标。我们可以通过解决半定规划问题来对我们必要的最优条件进行数值检验。然后,通过采用可分离的多项式低估,我们为具有盒或二价约束的多项式优化问题的类别建立了全局最优性的充分条件。我们使用实数代数几何的平方凸(SOS-凸)多项式之和构造低估量。标准凸度通常不共享的SOS凸性的一个重要特征是,可以通过解决半定编程问题来检查多项式是否为SOS凸性。我们通过简单的数值示例说明了我们的最优条件的多功能性。

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