An Enhancement in Clustering for Sequential Pattern Mining through Neural Algorithm Using Web Logs

Sheetal Sahu, P. Saurabh, Sandeep Rai
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引用次数: 9

Abstract

An Organization need to understand their customers' behavior, preferences and future needs which depend upon past behavior. Web Usage Mining is an active research topic in which customers session clustering is done to understand the customers activities. This paper investigates the problem of mining frequent pattern and especially focuses on reducing the number of scans of the database and reflecting the importance of pages. In the present work a novel method of pattern mining is presented to solve the problem through FSTSOM. In this Paper, the proposed method is an improvement to the web log mining method and to the online navigational pattern forecasting. Here, Neural based approach i.e. Self Organizing Map (SOM) is used for clustering of sessions as a trend analysis. SOM depends on the clustering performance with the number of requests. In the proposed method, using the SOM algorithm for Frequent Sequential Traversal Pattern Mining called FSTSOM. In this method, first using SOM algorithm and getting some cluster of web-logs. Then loading that web-log cluster, which is nearly related to frequent pattern. After that applying Min-Max Weight of Page in Sequential Traversal Pattern. Finally, established good prediction with the number of data and the excellence of the results.
基于Web日志的神经算法增强序列模式挖掘的聚类
组织需要了解顾客的行为、偏好和未来的需求,这些都取决于顾客过去的行为。Web使用挖掘是一个活跃的研究课题,它通过客户会话聚类来了解客户的活动。本文研究了频繁模式的挖掘问题,重点研究了减少数据库扫描次数和反映页面重要性的问题。本文提出了一种新的模式挖掘方法,通过FSTSOM来解决这一问题。本文提出的方法是对网络日志挖掘方法和在线导航模式预测方法的改进。在这里,基于神经的方法即自组织映射(SOM)被用于会话聚类作为趋势分析。SOM取决于请求数量的集群性能。在提出的方法中,使用SOM算法进行频繁顺序遍历模式挖掘(FSTSOM)。该方法首先采用SOM算法,对网络日志进行聚类。然后加载web日志集群,这几乎与频繁模式相关。然后在顺序遍历模式中应用页面的最小-最大权重。最后,通过数据量和结果的优化,建立了良好的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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