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Comparison of Quadratic Convex Reformulations to Solve the Quadratic Assignment Problem

机译:解决二次赋值问题的二次凸重构的比较

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We consider the (QAP) that consists in minimizing a quadratic function subject to assignment constraints where the variables are binary. In this paper, we build two families of equivalent quadratic convex formulations of (QAP). The continuous relaxation of each equivalent formulation is then a convex problem and can be used within a B&B. In this work, we focus on finding the "best" equivalent formulation within each family, and we prove that it can be computed using semidefinite programming. Finally, we get two convex formulations of (QAP) that differ from their sizes and from the tightness of their continuous relaxation bound. We present computational experiments that prove the practical usefulness of using quadratic convex formulation to solve instances of (QAP) of medium sizes.
机译:我们考虑的(QAP)在于最大程度地减少二次函数,该二次函数受变量约束为二进制的赋值约束的影响。在本文中,我们建立了(QAP)的两个等价二次凸公式族。因此,每个等效配方的连续松弛是一个凸形问题,可以在B&B内使用。在这项工作中,我们专注于找到每个系列中的“最佳”等效公式,并且证明了可以使用半定编程来计算该公式。最后,我们得到(QAP)的两个凸公式,它们的大小和连续松弛约束的紧密度不同。我们目前的计算实验证明了使用二次凸公式来解决中等大小(QAP)实例的实用性。

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