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Reoptimization in Lagrangian methods for the 0-1 quadratic knapsack problem

机译:0-1二次背包问题在Lagrangian方法中的重新优化

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摘要

The 0-1 quadratic knapsack problem consists of maximizing a quadratic objective function subject to a linear capacity constraint. To exactly solve large instances of this problem with a tree search algorithm (e.g., a branch and bound method), the knowledge of good lower and upper bounds is crucial for pruning the tree but also for fixing as many variables as possible in a preprocessing phase. The upper bounds used in the best known exact approaches are based on Lagrangian relaxation and decomposition. It appears that the computation of these Lagrangian dual bounds involves the resolution of numerous 0-1 linear knapsack subproblems. Thus, taking this huge number of resolutions into account, we propose to embed reoptimization techniques for improving the efficiency of the preprocessing phase of the 0-1 quadratic knapsack resolution. Namely, reoptimization is introduced to accelerate each independent sequence of 0-1 linear knapsack problems induced by the Lagrangian relaxation as well as the Lagrangian decomposition. Numerous numerical experiments validate the relevance of our approach.
机译:0-1二次背包问题包括在线性容量约束下最大化二次目标函数。为了使用树搜索算法(例如,分支定界方法)准确解决此问题的大实例,了解良好的上下限对于修剪树以及在预处理阶段固定尽可能多的变量至关重要。最知名的精确方法中使用的上限基于拉格朗日弛豫和分解。似乎这些拉格朗日对偶边界的计算涉及许多0-1线性背包子问题的解决。因此,考虑到大量的分辨率,我们建议嵌入重新优化技术以提高0-1二次背包分辨率的预处理阶段的效率。即,引入重新优化以加速由拉格朗日弛豫以及拉格朗日分解引起的0-1线性背包问题的每个独立序列。大量的数值实验验证了我们方法的相关性。

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