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NEW METAHEURISTIC APPROACHES FOR THE LEAF-CONSTRAINED MINIMUM SPANNING TREE PROBLEM

机译:叶约束最小跨树问题的新的元动力学方法

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摘要

Given an undirected, connected, weighted graph, the leaf-constrained minimum spanning tree (LCMST) problem seeks a spanning tree of the graph with smallest weight among all spanning trees of the graph, which contains at least l leaves. In this paper we have proposed two new metaheuristic approaches for the LCMST problem. One is an ant-colony optimization (ACO) algorithm, whereas the other is a tabu search based algorithm. Similar to a previously proposed genetic algorithm, these metaheuristic approaches also use the subset coding that represents a leaf-constrained spanning tree by the set of its interior vertices. Our new approaches perform well in comparison with two best heuristics reported in the literature for the problem - the subset-coded genetic algorithm and a greedy heuristic.
机译:给定一个无向,连通,加权图,叶约束最小生成树(LCMST)问题在图的所有生成树中寻找权重最小的图的生成树,该图至少包含1个叶子。在本文中,我们针对LCMST问题提出了两种新的元启发式方法。一种是蚁群优化(ACO)算法,而另一种是基于禁忌搜索的算法。与先前提出的遗传算法相似,这些元启发式方法还使用子集编码,该子集编码通过其内部顶点集来表示叶约束的生成树。与文献中针对该问题报告的两种最佳启发式算法相比,我们的新方法表现良好:子集编码遗传算法和贪婪启发式算法。

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