有主题的在线本地社区

Mrudula Murali, Katerina Potika, C. Pollett
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引用次数: 2

摘要

网络中的社区是一组节点,这些节点在集合内紧密相连,但与集合外的节点之间的连接很少。在大型网络中检测社区有助于解决许多现实世界的问题。然而,在一个复杂的网络中,通过关注整个网络来检测这样的社区是昂贵的。相反,人们可以专注于从一个或多个感兴趣的种子节点开始寻找重叠的社区。此外,在在线设置下,网络被给定为高阶结构的流,即节点的三角形被聚类成社区。在本文中,我们提出了一种在线的局部图社区检测算法,该算法使用了节点三角形等主题。我们提供了实验结果,并与另一种名为COEUS的算法进行了比较。我们使用两个公共数据集,一个是Amazon数据,另一个是DBLP数据。此外,我们使用Internet Archive创建并实验了一个由网页及其链接组成的新数据集。后一种数据集提供了更好地理解处理图案与处理边缘的不同之处的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online local communities with motifs
A community in a network is a set of nodes that are densely and closely connected within the set, yet sparsely connected to nodes outside of it. Detecting communities in large networks helps solve many real-world problems. However, detecting such communities in a complex network by focusing on the whole network is costly. Instead, one can focus on finding overlapping communities starting from one or more seed nodes of interest. Moreover, on the online setting the network is given as a stream of higher order structures, i.e., triangles of nodes to be clustered into communities.In this paper, we propose an on online local graph community detection algorithm that uses motifs, such as triangles of nodes. We provide experimental results and compare it to another algorithm named COEUS. We use two public datasets, one of Amazon data and the other of DBLP data. Furthermore, we create and experiment on a new dataset that consists of web pages and their links by using the Internet Archive. This latter dataset provides insights to better understand how working with motifs is different than working with edges.
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