Detecting Communities in Large Networks by Iterative Local Expansion

Jiyang Chen, Osmar R Zaiane, R. Goebel
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引用次数: 54

Abstract

Much structured data of scientific interest can be represented as networks, where sets of nodes or vertices are joined together in pairs by links or edges. Although these networks may belong to different research areas, there is one property that many of them do have in common: the network community structure, which means that there exists densely connected groups of vertices, with only sparser connections between groups. Identifying community structure in networks has attracted much research attention. However, most existing approaches require structure information of the graph in question to be completely accessible, which is impractical for some large networks, e.g., the World Wide Web (WWW). In this paper, we propose a community discovery algorithm for large networks that iteratively finds communities based on local information only. We compare our algorithm with previous global approaches to show its scalability. Experimental results on real world networks, such as the co-purchase network from Amazon, verify the feasibility and effectiveness of our approach.
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基于迭代局部扩展的大型网络社区检测方法
许多具有科学意义的结构化数据可以表示为网络,其中节点或顶点的集合通过链接或边成对地连接在一起。虽然这些网络可能属于不同的研究领域,但它们中的许多都有一个共同点:网络社区结构,这意味着存在密集连接的顶点组,组之间只有稀疏连接。识别网络中的社区结构已经引起了人们的广泛关注。然而,大多数现有的方法要求所讨论的图的结构信息是完全可访问的,这对于一些大型网络,例如万维网(WWW)是不切实际的。在本文中,我们提出了一种社区发现算法,该算法仅基于本地信息迭代地发现社区。我们将我们的算法与以前的全局方法进行比较,以显示其可扩展性。在现实网络上的实验结果,如亚马逊的共同购买网络,验证了我们方法的可行性和有效性。
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