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Semidefinite programming relaxations through quadratic reformulation for box-constrained polynomial optimization problems

机译:框约束多项式优化问题的二次定式半定规划松弛

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In this paper we introduce new semidefinite programming relaxations to box-constrained polynomial optimization programs (P). For this, we first reformulate (P) into a quadratic program. More precisely, we recursively reduce the degree of (P) to two by substituting the product of two variables by a new one. We obtain a quadratically constrained quadratic program. We build a first immediate SDP relaxation in the dimension of the total number of variables. We then strengthen the SDP relaxation by use of valid constraints that follow from the quadratization. We finally show the tightness of our relaxations through several experiments on box polynomial instances.
机译:在本文中,我们向框约束多项式优化程序(P)引入了新的半定规划松弛。为此,我们首先将(P)重新制定为二次程序。更准确地说,我们将两个变量的乘积替换为一个新变量,从而将(P)的程度递归减少到两个。我们获得一个二次约束二次程序。我们在变量总数的维度上建立了第一个立即的SDP松弛。然后,我们使用来自平方的有效约束来加强SDP松弛。最后,我们通过对盒多项式实例进行的几次实验来证明松弛的紧度。

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