New metaheuristic approaches for the leaf-constrained minimum spanning tree problem
New metaheuristic approaches for the leaf-constrained minimum spanning tree problem
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Date
2008-08-01
Authors
Singh, Alok
Baghel, Anurag Singh
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Abstract
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 heuris-tics reported in the literature for the problem - the subset-coded genetic algorithm and a greedy heuristic. © World Scientific Publishing Co. & Operational Research Society of Singapore.
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Keywords
Ant-colony optimization,
Combinatorial optimization,
Leaf-constrained minimum spanning tree,
Subset coding,
Tabu search
Citation
Asia-Pacific Journal of Operational Research. v.25(4)