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Web Page Prediction by Clustering and Integrated Distance Measure

机译:通过聚类和集成距离测量的网页预测

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摘要

The tremendous progress of the internet and the World Wide Web in the recent era has emphasized the requirement for reducing the latency at the client or the user end. In general, caching and prefetching techniques are used to reduce the delay experienced by the user while waiting to get the web page from the remote web server. The present paper attempts to solve the problem of predicting the next page to be accessed by the user based on the mining of web server logs that maintains the information of users who access the web site. The prediction of next page to be visited by the user may be pre fetched by the browser which in turn reduces the latency for user. Thus analyzing user's past behavior to predict the future web pages to be navigated by the user is of great importance. The proposed model yields good prediction accuracy compared to the existing methods like Markov model, association rule, ANN etc.
机译:互联网和万维网在最近的时代的巨大进展强调了减少客户端或用户结束的延迟的要求。 通常,缓存和预取技术用于减少用户在从远程Web服务器获取网页时所经历的延迟。 本文试图解决用户基于Web服务器日志的挖掘来预测用户访问下一页的问题,该日志维护访问网站的用户的信息。 用户可以预先预测浏览器的下一页的预测,浏览器又降低了用户的延迟。 因此,分析用户过去的行为来预测用户被用户导航的未来网页非常重要。 与马尔可夫模型,关联规则,安等等现有方法相比,所提出的模型产生良好的预测精度。

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