首页> 外文期刊>International Journal of Artificial Intelligence Tools: Architectures, Languages, Algorithms >FINDING REPRESENTATIVE WEB PAGES BASED ON A SOM AND A REVERSE CLUSTER ANALYSIS
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FINDING REPRESENTATIVE WEB PAGES BASED ON A SOM AND A REVERSE CLUSTER ANALYSIS

机译:基于SOM和反向聚类分析的代表性网页

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Enhancing the content and structure of a web site is a very important task which can help to maintain people visiting a web site and gain new visits (or customers). Web mining area helps to enhance a web site organization and contents using data mining algorithms. In particular we may perform Web Mining using a Self Organizing Feature Map (SOFM or SOM) it is always needed an analysis phase by experts. To help analysts to perform this phase after SOFMs' training, many post-processing techniques have been developed (component planes, labels, etc.); however, none of these techniques are useful when working in web mining for off-line enhancements of a web site. In this paper an algorithm called Reverse Cluster Analysis (RCA) will be provided. It aims to identify important web pages based on a self organizing feature map (SOFM) when performing web text mining (WTM) and web usage mining (WUM). We successfully applied this technique in a real web site to show its effectiveness. We have extended previous work performing a comparison with another unsupervised technique, administrators survey and an extended survey.
机译:增强网站的内容和结构是一项非常重要的任务,它可以帮助维持访问网站的人员并获得新的访问量(或客户)。 Web挖掘区域使用数据挖掘算法帮助增强网站的组织和内容。特别是,我们可能会使用自组织特征图(SOFM或SOM)进行Web挖掘,而专家始终需要进行分析阶段。为了帮助分析人员在SOFM培训后执行此阶段,开发了许多后处理技术(组件平面,标签等);但是,在进行Web挖掘以对网站进行离线增强时,这些技术都没有用。在本文中,将提供一种称为反向聚类分析(RCA)的算法。它旨在在执行Web文本挖掘(WTM)和Web使用率挖掘(WUM)时根据自组织特征图(SOFM)识别重要的网页。我们在实际的网站上成功应用了此技术,以显示其有效性。我们扩展了以前的工作,与另一种无监督技术进行比较,即管理员调查和扩展调查。

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