基于加速蚁群算法的点击流智能聚类

H. Inbarani, K. Thangavel
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引用次数: 7

摘要

Web挖掘是从与万维网相关的工件或活动中提取有趣的和潜在有用的模式和隐含信息。有三个与web挖掘相关的知识发现领域:web内容挖掘、web结构挖掘和web使用挖掘。Web使用挖掘是从Web访问日志中提取有趣模式的过程。基于访问者与网站的交互对访问者进行分类是Web使用挖掘中的一个关键问题。不同用户产生的点击流通常遵循不同的模式,了解这些模式可能有助于提供定制的内容。本文基于蚂蚁的导航行为和浏览时间对点击流进行聚类,提出了一种基于蚂蚁化学识别系统的加速蚂蚁聚类算法(ACCANTCLUST),该算法自动找到聚类的数量。采用蚁群聚类算法(ANTCLUST)对一个网站的不同会话数据集进行对比分析。实证结果清楚地表明,与ANTCLUST相比,所提出的ACCANTCLUST表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clickstream Intelligent Clustering using Accelerated Ant Colony Algorithm
Web Mining is the extraction of interesting and potentially useful patterns and implicit information from artifacts or activity related to the Worldwide Web. There are three knowledge discovery domains that pertain to web mining: Web Content Mining, Web Structure Mining, and Web Usage Mining. Web usage mining is the process of extracting interesting patterns from web access logs. Categorizing visitors based on their interactions with a website is a key problem in Web usage mining. The clickstreams generated by various users often follow distinct patterns, the knowledge of which may help in providing customized content. In this paper, we focus on clickstream clustering based on their navigation behavior and the time spent at each page and we propose an accelerated ant based clustering algorithm (ACCANTCLUST) which is based on chemical recognition system of ants and this algorithm finds the number of clusters automatically. A comparative analysis is performed with ant colony clustering algorithm (ANTCLUST) by taking different session data sets of a Web site. Empirical results clearly show that the proposed ACCANTCLUST performs well when compared ANTCLUST.
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