利用局部效用最大化来检测社会网络社区

Ardavan Afshar, Bahareh Ashenagar, Negar Foroutan Eghlidi, M. Z. Jahromi, A. Hamzeh
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引用次数: 4

摘要

社区检测近年来已成为社会网络分析中最热门的研究课题之一。文献中已经考虑的大多数社区检测方法都试图通过集中的决策者来优化全局度量。这些方法在庞大的网络中过于耗时。有几种方法需要初始参数,如群体数量和规模,以便发现问题;然而,他们并不总是可以到达的。本文提出了一种用于社区识别的局部效用最大化方法,该方法是一个分布式框架,其中每个社区作为一个自私的代理,根据一些预定义的动作来最大化其效用函数。我们的框架有一些关键的特性。第一个特性是易于通过并行计算概念实现的局部方法,而第二个特性是对效用度量的经济解释。在输出基准数据集上的实验结果表明,我们提出的方法可以像现有文献中已经存在的集中方法一样检测非重叠社区。
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Using local utility maximization to detect social networks communities
Community detection has recently turned to be one of the most popular research topics in social networks analysis. Majority of community detection methods already considered in the literature try to optimize a global metric through a centralized decision maker. These approaches are too time-consuming in huge networks. Several of methods need initial parameters such as number and size of communities in order to find out the problems; however, they are not always reachable. In this paper, we propose a local utility maximization approach for community identification as a distributed framework in which each community acts as a selfish agent to maximize its utility function based on some predefined actions. Our framework has some crucial characteristic features. The first feature is the local approach that is easily implemented through parallel computing concepts, while the second is an economical interpretation of utility measurement. Experimental results on output benchmark datasets show that our proposed method can perform as well as the existing centralized approaches that already exist in the literature to detect non-overlapping communities.
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