一种基于遗传算法的序列模式挖掘新方法

M. Saravanan, V. Jyothi
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引用次数: 4

摘要

Web使用情况挖掘可以描述为通过挖掘来自特定网站的日志文件和相关数据来发现和分析用户访问模式。每天有大量的访问者与世界各地的网站进行互动。大量的数据正在产生,这些数据在合规客户行为领域可能对公司非常有帮助。”万维网包含越来越多的网站,而这些网站又包含越来越多的网页。当一个用户访问一个新的网站,它必须通过大量的网页,以满足他们的需求。Web使用挖掘是从服务器日志中删除有用信息的过程。因此,本研究利用遗传算法发现网络文件的顺序模式。这种方法可以用来分析最近访问者的趋势,并导致创建重复和访问最多的页面。使用遗传算法的目的是寻找最优的顺序网页。
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A novel approach for sequential pattern mining by using genetic algorithm
Web Usage Mining can be described as the discovery and analysis of user access pattern through mining of log files and associated data from a particular websites. Huge Number of visitors interact daily with web sites around the world. Huge amount of data are being produced and these in order could be very helpful to the company in the field of compliant customer's behaviors'. The world wide web contains increasing amount of websites which in turn contain increasing number of web pages. When a user visits a new website, it has to go through large number of web pages to meet their necessities. Web usage mining is the procedure of removing useful information from server logs. Hence, this work discovers sequential patterns of web files using genetic algorithm. This approach can be used to analyze the recent visitor's trend and lead to the creation of repeated and most visited pages. The purpose of using genetic algorithm is to find optimal sequential web pages.
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