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An efficient local search for large-scale set-union knapsack problem

机译:一个高效的大规模的本地搜索set-union背包问题

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Purpose The set-union knapsack problem is one of the most significant generalizations of the Non-deterministic Polynomial (NP)-hard 0-1 knapsack problem in combinatorial optimization, which has rich application scenarios. Although some researchers performed effective algorithms on normal-sized instances, the authors found these methods deteriorated rapidly as the scale became larger. Therefore, the authors design an efficient yet effective algorithm to solve this large-scale optimization problem, making it applicable to real-world cases under the era of big data. Design/methodology/approach The authors develop three targeted strategies and adjust them into the adaptive tabu search framework. Specifically, the dynamic item scoring tries to select proper items into the knapsack dynamically to enhance the intensification, while the age-guided perturbation places more emphasis on the diversification of the algorithm. The lightweight neighborhood updating simplifies the neighborhood operators to reduce the algorithm complexity distinctly as well as maintains potential solutions. The authors conduct comparative experiments against currently best solvers to show the performance of the proposed algorithm. Findings Statistical experiments show that the proposed algorithm can find 18 out of 24 better solutions than other algorithms. For the remaining six instances on which the competitor also achieves the same solutions, ours performs more stably due to its narrow gap between best and mean value. Besides, the convergence time is also verified efficiency against other algorithms. Originality/value The authors present the first implementation of heuristic algorithm for solving large-scale set-union knapsack problem and achieve the best results. Also, the authors provide the benchmarks on the website for the first time.
机译:目的set-union背包问题是其中之一最重要的概括非确定性多项式(NP)硬0 - 1背包问题的组合优化,它有丰富的应用场景。一些研究人员进行有效的算法在正常情况下,作者发现这些方法迅速恶化的规模变得更大。有效但有效的算法来解决这个问题大规模优化问题,使它适用于现实世界的时代下的情况下大数据。制定三个目标战略和调整在自适应禁忌搜索框架。具体来说,动态项试图得分动态地选择适当的项目到背包提高集约化,age-guided扰动更加强调的地方算法的多样化。轻量级的街区更新简化了社区运营商减少算法复杂性明显以及维护可能的解决方案。针对目前最好的比较实验解决显示提出的性能算法。该算法能找到18 24比其他算法更好的解决方案。剩下的六个实例的竞争对手也达到同样的解决方案,我们的执行最好更稳定由于其缩小差距和平均值。也对其他验证效率算法。第一个启发式算法的实现为解决大规模set-union背包问题,实现最好的结果。作者提供的基准在网站上这已经不是第一次了。

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