Web二部核的提取与聚类方法

Nan Yang, Hui Ding, Yue Liu
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引用次数: 0

摘要

本文重点研究了网络社区发现中的几个关键问题。基于面向主题的社区发现,分析了拖网捕捞方法中完全二部图的不足。引入了x-core-set的概念,它作为社区的核心签名比CBG更合理。我们从节点x构造一个二部图,然后(i, j)对图进行剪枝得到x核集。通过扫描主题子图,我们可以提取一组x核集。最后,采用层次聚类算法对这些x核集进行聚类,形成群落的树形图。我们证明了由x和(i, j)剪枝集合的二部图可以计算x核集。实验建立在与HITS方法相同的数据集上,不同之处在于返回的页面是由4个搜索引擎整合而成的。结果表明,该算法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting and Clustering Method of Web Bipartite Cores
The paper focuses on some key problems in Web communities’ discovery. Based on topic-oriented communities discovery, we analyze some insufficiencies of CBG (complete bipartite graph) in trawling method. The conception of x-core-set is introduced, instead of CBG, it is more reasonable as a signature of core of community. We construct a bipartite graph from a node x and then (i, j)pruning the graph to obtain x-cores-set. By scanning topic subgraph, we can extract a set of x-cores-sets. Finally, a hierarchal clustering algorithm is applied to these x-cores-sets and the dendrogram of community is formed. We proved that x-cores-set, consisted of x-cores, can be calculated by a bipartite graph collected from x and (i, j)pruning. The experiment is set up on the dataset that is same as that in HITS method, except for returned pages are integrated from 4 search engines. The result shows that our algorithm is effective and efficient.
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