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Degree-Constrained Minimum Spanning Tree Problem in Stochastic Graph

机译:随机图的度约束最小生成树问题

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摘要

A degree-constrained minimum spanning tree (DCMST)problem is an NP-hard combinatorial optimization problem in graph theory seeking the minimum cost spanning tree with the additional constraint on the vertex degree. Several different approaches have been proposed in the literature to solve this problem using a deterministic graph. However, to the best of the author's knowlege, no work has been performed on solving the problem using stochastic edge-weighted graphs. In this article, a learning automata-based algorithm is proposed to find a near optimal solution of the DCMST problem using a stochastic graph, where the cost associated with the graph edge is a random variable with a priori unknown probability distribution. The convergence of the proposed algorithm to the optimal solution is theoretically proved based on the Martingale theorem. To show the performance of the proposed algorithm, several simulation experiments are conducted on stochastic Euclidean graph instances. Numerical results are compared with those of the standard sampling method (SSM). The numerical results confirm the superiority of the proposed sampling technique over the SSM both in terms of the sampling rate and solution optimality.
机译:度约束最小生成树(DCMST)问题是图论中的NP难组合优化问题,它寻求对顶点度有附加约束的最小成本生成树。文献中已经提出了几种不同的方法来使用确定性图来解决该问题。但是,据作者所知,尚未进行任何使用随机边缘加权图来解决问题的工作。在本文中,提出了一种基于学习自动机的算法,用于使用随机图找到DCMST问题的最佳解,其中与图边缘相关的成本是具有先验未知概率分布的随机变量。基于the定理,从理论上证明了算法的收敛性。为了显示该算法的性能,对随机欧几里德图实例进行了一些仿真实验。将数值结果与标准采样方法(SSM)的结果进行比较。数值结果证实了所提出的采样技术在采样率和求解最优性方面均优于SSM。

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