用学习自动机求解多路网络中的最小支配集

M. D. Khomami, Alireza Rezvanian, A. Saghiri, M. Meybodi
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引用次数: 0

摘要

支配集(DS)问题关注的是选择一个顶点子集,即图中的每个顶点与该子集的一个或多个节点相邻。具有最小基数的DS称为最小支配集(MDS)。MDS问题在网络监控、路由、疫情防控、社交网络等领域有着广泛的应用。MDS被称为NP-Hard问题。然而,现有的研究主要集中在单个网络的MDS问题上。然而,在许多实际结构中,存在着一种复杂的结构,它是由一组由不同连接组合而成的组件,称为多路网络。本文介绍了一种基于学习自动机(LA)的多路网络中MDS问题的求解算法。在该算法中,复用网络的每个节点被认为是一个具有候选或非候选两个动作的LA,分别对应于支配集和非支配集。该算法通过选择候选MDS和评估机制,寻找具有最小基数的支配集,随着算法的进行,候选解收敛于多路网络MDS的最优解。本文提出的算法利用学习和学习自动机的寻解行为,迭代地减少了多路网络中的控制集数量。实验结果表明,在许多知名的数据集中,该算法在评价度量方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solving Minimum Dominating Set in Multiplex Networks Using Learning Automata
The dominating set (DS) problem has noticed the selecting a subset of vertices that every vertex in the graph is either is adjacent to one or more nodes of this subset. The DS with the minimum cardinality is called MDS (minimum dominating set). The MDS problem has several applications in different domains, such as network monitoring, routing, epidemic control and social network. The MDS is known as the NP-Hard problem. Nevertheless, the existing research has focused on the MDS problem to single networks. However, in many real structures, there exist a complex structure involving a set of components combined up by different connections and known as multiplex networks. In this paper, we introduce a learning automaton (LA) based algorithm for find the MDS problem in multiplex networks. In the proposed algorithm, each node of the multiplex network is considered an LA with two actions of a candidate or non-candidate corresponding to the dominating set and non-dominating set. By selecting candidate DS and evaluation mechanisms, the algorithm tries to find a dominating set with the smallest cardinality and as the algorithm proceeds, a candidate solution converges to the optimal solution of the MDS of multiplex networks. With the aid of learning and the behavior of learning automata for finding solution, this algorithm which is present in this paper reduces the number of dominating set, in multiplex networks iteratively. Experimental results demonstrate that in many well-known datasets, the proposed algorithm is efficient with respect to the evaluation measure.
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