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An overlapping community detection algorithm based on rough clustering of links

机译:基于链接粗聚类的重叠社区检测算法

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The growth of networks is prevalent in almost every field due to the digital transformation of consumers, business and society at large. The unfolding of community structure in such real-world complex networks is crucial since it aids in gaining strategic insights leading to informed decisions. Moreover, the co-occurrence of disjoint, overlapping and nested community patterns in such networks demands methodologically rigorous community detection algorithms so as to foster cumulative tradition in data and knowledge engineering. In this paper, we introduce an algorithm for overlapping community detection based on granular information of links and concepts of rough set theory. First, neighborhood links around each pair of nodes are utilized to form initial link subsets. Subsequently, constrained linkage upper approximation of the link subsets is computed iteratively until convergence. The upper approximation subsets obtained during each iteration are constrained and merged using the notion of mutual link reciprocity. The experimental results on ten real-world networks and comparative evaluation with state-of-the-art community detection algorithms demonstrate the effectiveness of the proposed algorithm.
机译:由于消费者,企业和整个社会的数字化转型,网络的增长几乎遍及每个领域。在这样的现实世界中,复杂的社区结构的发展至关重要,因为它有助于获得战略见识,从而做出明智的决策。此外,在这样的网络中,不相交,重叠和嵌套的社区模式的共存要求在方法上严格的社区检测算法,以便在数据和知识工程中培育累积的传统。在本文中,我们介绍了一种基于链接的细粒度信息和粗糙集理论的概念的重叠社区检测算法。首先,利用每对节点周围的邻域链接来形成初始链接子集。随后,迭代计算链接子集的约束链接上近似,直到收敛为止。使用相互链接互易性的概念来约束和合并在每次迭代期间获得的较高近似子集。在十个真实世界网络上的实验结果以及使用最新的社区检测算法进行的比较评估证明了该算法的有效性。

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