Customized Category Based Clustering of URLs

Neetu Anand
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引用次数: 0

Abstract

Web applications are taking popularity in number of ways. Monitoring the client side data allow for gathering valuable information about its behaviour. In this paper an intelligent and integrated system for user activity monitoring for both computer and internet movement is proposed. The system provides on-line and off-line monitoring and allows detecting user behaviour. On-line monitoring is carried in real time and is used to predict user actions. Off-line monitoring is carried out after user has ended his work, and is based on the analysis of statistical parameters of user behaviour. A method for the identifying the category of web sites is also presented. Our system performs clustering on the basis of URL. The URL clustering is very informative, making techniques based on it faster than that make use of text information as well.
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基于自定义分类的url聚类
Web应用程序正在以多种方式流行起来。监视客户端数据可以收集有关其行为的有价值的信息。本文提出了一种智能集成的用户活动监测系统,用于计算机和网络运动的监控。该系统提供在线和离线监测,并允许检测用户行为。在线监测是实时进行的,用于预测用户的行为。离线监控是在用户结束工作后进行的,基于对用户行为统计参数的分析。提出了一种识别网站分类的方法。我们的系统在URL的基础上进行聚类。URL聚类的信息量非常大,使得基于它的技术比使用文本信息的技术更快。
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