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Design and Implementation of a Web Usage Mining Model Based On Upgrowth and Preflxspan

机译:基于Upgrowth和Preflxspan的Web使用挖掘模型的设计与实现

摘要

Web Usage Mining (WUM) integrates the techniques of two popular research fields - Data Mining and the Internet. By analyzing the potential rules hidden in web logs, WUM helps personalize the delivery of web content and improve web design, customer satisfaction and user navigation through pre-fetching and caching. This paper introduces two prevalent data mining algorithms - FPgrowth and PrefixSpan into WUM and they are applied in a real business case. Maximum Forward Path (MFP) is also used in the web usage mining model during sequential pattern mining along with PrefixSpan so as to reduce the interference of u22false visitu22 caused by browser cache and raise the accuracy of mining frequent traversal paths. Detailed analysis and application on the corresponding results are discussed.
机译:Web用法挖掘(WUM)集成了两个流行研究领域的技术-数据挖掘和Internet。通过分析隐藏在Web日志中的潜在规则,WUM通过预取和缓存帮助个性化Web内容的交付并改善Web设计,客户满意度和用户导航。本文将两种流行的数据挖掘算法FPgrowth和PrefixSpan引入到WUM中,并将它们应用于实际的业务案例中。在网络使用率挖掘模型中,还与PrefixSpan一起在网络使用率挖掘模型中使用了最大转发路径(MFP),以减少浏览器缓存对 u22false visit u22的干扰,并提高了挖掘频繁遍历路径的准确性。讨论了对相应结果的详细分析和应用。

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