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Web user clustering and Web prefetching using Random Indexing with weight functions

机译:使用具有权重函数的随机索引进行Web用户聚类和Web预取

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摘要

Users of a Web site usually perform their interest-oriented actions by clicking or visiting Web pages, which are traced in access log files. Clustering Web user access patterns may capture common user interests to a Web site, and in turn, build user profiles for advanced Web applications, such as Web caching and prefetching. The conventional Web usage mining techniques for clustering Web user sessions can discover usage patterns directly, but cannot identify the latent factors or hidden relationships among users' navigational behaviour. In this paper, we propose an approach based on a vector space model, called Random Indexing, to discover such intrinsic characteristics of Web users' activities. The underlying factors are then utilised for clustering individual user navigational patterns and creating common user profiles. The clustering results will be used to predict and prefetch Web requests for grouped users. We demonstrate the usability and superiority of the proposed Web user clustering approach through experiments on a real Web log file. The clustering and prefetching tasks are evaluated by comparison with previous studies demonstrating better clustering performance and higher prefetching accuracy.
机译:网站的用户通常通过单击或访问访问日志文件中跟踪的网页来执行其针对兴趣的操作。群集Web用户访问模式可以捕获网站的常见用户兴趣,进而为高级Web应用程序(例如Web缓存和预取)构建用户配置文件。用于对Web用户会话进行聚类的常规Web使用挖掘技术可以直接发现使用模式,但是无法识别用户导航行为之间的潜在因素或隐藏关系。在本文中,我们提出了一种基于向量空间模型的方法,称为随机索引,以发现Web用户活动的这种内在特征。然后,将潜在因素用于聚类单个用户导航模式并创建公共用户配置文件。聚类结果将用于预测和预取分组用户的Web请求。我们通过在真实的Web日志文件上进行的实验来证明所提出的Web用户集群方法的可用性和优越性。通过与以前的研究进行比较,评估了聚类和预取任务,这些研究表明聚类和预取任务具有更好的聚类性能和较高的预取精度。

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