向量和图:使用超结构聚类网站的两种表示

Esteban Meneses
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引用次数: 8

摘要

网站聚类包括寻找相关网站的有意义的组。一个网站与另一个网站的关联程度取决于我们如何表示网站。传统上,矢量和图形是表示种群中个体的两种重要结构。如果考虑到超结构,这两种表示都可以在Web领域发挥重要作用。通过分析Web站点的链接方式,我们可以构建向量或图形来理解Web站点集合是如何划分的。本文分析了这两种模型以及与之相关的四种算法:带向量的k-means和自组织映射(SOM)、带图的模拟退火和遗传算法。为了测试这些想法,我们聚集了中美洲Web中的一些Web站点。我们比较了使用这两种模型对这个Web站点集合进行聚类的结果,并展示了每种模型产生的聚类类型
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vectors and Graphs: Two Representations to Cluster Web Sites Using Hyperstructure
Web site clustering consists in finding meaningful groups of related Web sites. How related is some Web site to another is a question that depends on how we represent Web sites. Traditionally, vectors and graphs have been two important structures to represent individuals in a population. Both representations can play an important role in the Web area if hyper structure is considered. By analyzing the way Web sites are linked, we can build vectors or graphs to understand how a Web site collection is partitioned. In this paper, we analyze these two models and four associated algorithms: k-means and self-organizing maps (SOM) with vectors, simulated annealing and genetic algorithms with graphs. For testing these ideas we clustered some Web sites in the Central American Web. We compare the results for clustering this Web site collection using both models and show what kind of clusters each one produces
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