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A Lagrangian-DNN relaxation: a fast method for computing tight lower bounds for a class of quadratic optimization problems

机译:Lagrangian-DNN松弛:一种用于求解一类二次优化问题的紧下界的快速方法

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摘要

We propose an efficient computational method for linearly constrained quadratic optimization problems (QOPs) with complementarity constraints based on their Lagrangian and doubly nonnegative (DNN) relaxation and first-order algorithms. The simplified Lagrangian-completely positive programming (CPP) relaxation of such QOPs proposed by Arima, Kim, and Kojima in 2012 takes one of the simplest forms, an unconstrained conic linear optimization problem with a single Lagrangian parameter in a CPP matrix variable with its upper-left element fixed to 1. Replacing the CPP matrix variable by a DNN matrix variable, we derive the Lagrangian-DNN relaxation, and establish the equivalence between the optimal value of the DNN relaxation of the original QOP and that of the Lagrangian-DNN relaxation. We then propose an efficient numerical method for the Lagrangian-DNN relaxation using a bisection method combined with the proximal alternating direction multiplier and the accelerated proximal gradient methods. Numerical results on binary QOPs, quadratic multiple knapsack problems, maximum stable set problems, and quadratic assignment problems illustrate the superior performance of the proposed method for attaining tight lower bounds in shorter computational time.
机译:我们基于拉格朗日和双非负(DNN)松弛和一阶算法,提出了一种具有互补约束的线性约束二次优化问题(QOP)的有效计算方法。 Arima,Kim和Kojima在2012年提出的此类QOP的简化拉格朗日完全正编程(CPP)松弛采用最简单的形式之一,即CPP矩阵变量中具有单个拉格朗日参数的无约束圆锥线性优化问题,其上限为-left元素固定为1。用DNN矩阵变量替换CPP矩阵变量,我们得出Lagrangian-DNN弛豫,并建立原始QOP的DNN弛豫的最佳值与Lagrangian-DNN弛豫的最佳值之间的等价关系。然后,我们提出了一种有效的数值方法,该方法使用结合了近端交替方向乘数和加速近端梯度方法的对分法来进行Lagrangian-DNN松弛。二进制QOP,二次多重背包问题,最大稳定集问题和二次赋值问题的数值结果说明了该方法在较短的计算时间内获得严格下界的优越性能。

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