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首页> 外文期刊>Journal of heuristics >Combining variable neighborhood search with integer linear programming for the generalized minimum spanning tree problem
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Combining variable neighborhood search with integer linear programming for the generalized minimum spanning tree problem

机译:结合变量邻域搜索与整数线性规划求解广义最小生成树问题

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摘要

We consider the generalized version of the classical Minimum Spanning Tree problem where the nodes of a graph are partitioned into clusters and exactly one node from each cluster must be connected. We present a Variable Neighborhood Search (VNS) approach which uses three different neighborhood types. Two of them work in complementary ways in order to maximize search effectivity. Both are large in the sense that they contain exponentially many candidate solutions, but efficient polynomial-time algorithms are used to identify best neighbors. For the third neighborhood type we apply Mixed Integer Programming to optimize local parts within candidate solution trees. Tests on Euclidean and random instances with up to 1280 nodes indicate especially on instances with many nodes per cluster significant advantages over previously published metaheuristic approaches.
机译:我们考虑经典最小生成树问题的广义版本,其中图的节点被划分为群集,并且每个群集中必须恰好有一个节点被连接。我们提出了使用三种不同邻域类型的可变邻域搜索(VNS)方法。它们中的两个以互补的方式工作,以使搜索效果最大化。从意义上讲,它们都包含大量的候选解,这两者都是很大的,但是有效的多项式时间算法用于识别最佳邻居。对于第三个邻域类型,我们应用混合整数编程来优化候选解决方案树内的局部。对具有多达1280个节点的欧几里得和随机实例进行的测试表明,尤其是在每个群集具有多个节点的实例上,与以前发布的元启发式方法相比,具有明显的优势。

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