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Evolving dynamic web pages using web mining

机译:使用Web挖掘不断发展的动态网页

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The heterogeneity and the lack of structure that permeates much of the ever expanding information sources on the World Wide Web makes it difficult for the user to properly and efficiently access different web pages. Different users have different needs from the same web page. It is necessary to train the system to understand the needs and demands of the users. In other words there is a need for efficient and proper web mining. In this paper issues and possible ways of training the system and providing high level of organization for semi structured data available on the web is discussed. Web pages can be evolved based on history of query searches, browsing, links traversed and observation of the user behavior like book marking and time spent on viewing. Fuzzy clustering techniques help in grouping natural users and groups, neural networks, association rules and web traversals patterns help in efficient sequential analysis based on previous searches and queries by the user. In this paper we analyze web server logs using above mentioned techniques to know more about user interactions. Analyzing these web server logs help to closely understand the user behavior and his/her web access pattern.
机译:万维网上不断扩展的许多信息源的异构性和缺乏结构使用户难以正确有效地访问不同的网页。不同的用户在同一网页上有不同的需求。有必要对系统进行培训,以了解用户的需求。换句话说,需要有效和适当的Web挖掘。在本文中,讨论了培训系统并为网络上可用的半结构化数据提供高级组织的问题和可能的方式。可以根据查询搜索,浏览,遍历的链接以及观察用户行为(例如书记号和查看时间)的历史来发展网页。模糊聚类技术有助于对自然用户和组进行分组,神经网络,关联规则和Web遍历模式有助于根据用户先前的搜索和查询进行有效的顺序分析。在本文中,我们使用上述技术分析Web服务器日志,以了解有关用户交互的更多信息。分析这些Web服务器日志有助于紧密了解用户行为及其Web访问模式。

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