基于马尔可夫模型的用户网页访问预测混合技术

Priyank Panchal, Urmi D. Agravat
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引用次数: 10

摘要

Web挖掘包括三个不同的类别,即Web内容挖掘、Web结构挖掘和Web使用挖掘(从用户产生的交互中发现知识的过程,以访问日志、浏览器日志、代理服务器日志、用户会话数据、cookie的形式)。本文介绍了web服务器日志文件的挖掘过程,利用所提出的马尔可夫模型提取web链接预测的使用模式。该方法可以预测流行的网页或阶段以及用户的导航行为。本文提出了一种基于对相似度度量的聚类用户导航技术,该技术将马尔可夫模型与用于Web链接预测的apriori算法的概念相结合,是基于其他用户之前访问过的网页来预测用户将要访问的网页的过程。因此,Web预取技术减少了Web延迟,并且预测要预取的Web对象具有很高的准确性和良好的可扩展性,也有助于在不同的日志文件之间实现更好的预测精度。进化方法有助于训练模型做出与当前Web浏览模式相称的预测。
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Hybrid technique for user's web page access prediction based on Markov model
Web Mining consists of three different categories, namely Web Content Mining, Web Structure Mining, and Web Usage Mining (is the process of discovering knowledge from the interaction generated by the users in the form of access logs, browser logs, proxy-server logs, user session data, cookies). This paper present mining process of web server log files in order to extract usage patterns to web link prediction with the help of proposed Markov Model. The approaches result in prediction of popular web page or stage and user navigation behavior. Proposed technique cluster user navigation based on their pair-wise similarity measure combined with markov model with the concept of apriori algorithm which is used for Web link prediction is the process to predict the Web pages to be visited by a user based on the Web pages previously visited by other user. So that Web pre-fetching techniques reduces the web latency & they predict the web object to be pre-fetched with high accuracy and good scalability also help to achieve better predictive accuracy among different log file The evolutionary approach helps to train the model to make predictions commensurate to current web browsing patterns.
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