期刊文献+

Web内容挖掘与使用挖掘的整合应用 被引量:2

Application and Integration of Web Content and Usage Mining
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摘要 为了满足站点上更多用户的需求,基于一种整合Web内容挖掘和使用挖掘的个性化推荐算法,在内容挖掘和使用挖掘的预处理阶段,针对XML文档标签化以及内容动态性的特征,提出了一种新的主题权重以及会话有效性衡量的方法,实验证明该方法的推荐值更具准确性和有效性. To meet the demand of more users in a site, a new method was presented based on web content and usage mining. It was to scale the theme weight and effective session in the data preparation of the content and usage mining, concerning XML document being labeled and its content being dynamic. Primary experiments show that this method is more effective than the content and usage mining.
出处 《空军雷达学院学报》 2006年第1期55-57,64,共4页 Journal of Air Force Radar Academy
关键词 WEB内容挖掘 WEB使用挖掘 XML语言 web content mining web usage mining XML language
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参考文献8

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