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A Method for Community Detection of Complex Networks Based on Hierarchical Clustering

机译:基于层次聚类的复杂网络社区检测方法

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摘要

Due to the development and popularization of Internet, there is more and more research focusing on complex networks. Research shows that there exists community structure in complex networks. Finding out community structure helps to extract useful information in complex networks, so the research on community detection is becoming a hotspot in recent years. There are two remarkable problems in detecting communities. Firstly, the detection accuracy is normally not very high; Secondly, the assessment criteria are not very effective when real communities are unknown. This paper proposes an algorithm for community detection based on hierarchical clustering (CDHC Algorithm). CDHC Algorithm firstly creates initial communities from global central nodes, then expands the initial communities layer by layer according to the link strength between nodes and communities, and at last merges some very small communities into large communities. This paper also proposes the concept of extensive modularity, overcoming some weakness of modularity. The extensive modularity can better evaluate the effectiveness of algorithms for community detection. This paper verifies the advantage of extensive modularity through experiments and compares CDHC Algorithm and some other representative algorithms for community detection on some frequently used datasets, so as to verify the effectiveness and advantages of CDHC Algorithm.
机译:由于因特网的发展和普及,越来越多的研究集中在复杂的网络上。研究表明,复杂网络中存在社区结构。找出社区结构有助于从复杂的网络中提取有用的信息,因此近年来有关社区检测的研究成为一个热点。在发现社区方面存在两个显着的问题。首先,检测精度通常不是很高。其次,当真实社区未知时,评估标准不是很有效。提出了一种基于层次聚类的社区检测算法(CDHC算法)。 CDHC算法首先从全局中心节点创建初始社区,然后根据节点和社区之间的链接强度逐层扩展初始社区,最后将一些非常小的社区合并为大型社区。本文还提出了扩展模块化的概念,克服了模块化的某些弱点。广泛的模块化可以更好地评估社区检测算法的有效性。本文通过实验验证了扩展模块化的优势,并比较了CDHC算法和其他一些代表性算法在一些常用数据集上的社区检测,从而验证了CDHC算法的有效性和优势。

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