Web Site Community Analysis Based on Suffix Tree and Clustering Algorithm

K. Slaninová, J. Martinovič, T. Novosad, Pavla Drázdilová, Lukás Vojácek, V. Snás̃el
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引用次数: 9

Abstract

Web site community analysis is one of the most valuable tools which can be used for user segmentation in web marketing sphere. The user segmentation is successfully used in campaign analysis, for web/product/service recommendation, or for web usage optimization. This type of analysis can be helpful in web performance analysis, web usability or accessibility as well. Various software is available for user behavior analysis or for analysis of user interaction with the web site. However, most of them have the user segmentation based only on statistical measurement of such information like click-through rates, identification of popular paths and others. In this paper there is presented the web site community analysis oriented to the user segmentation. The analysis is based on the users' similar behavior on the website. For the identification of similar behavioral patterns was proposed the algorithm based on sequential pattern mining method combined with clustering using generalized suffix tree data structure.
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基于后缀树和聚类算法的网站社区分析
网站社区分析是网络营销领域中最有价值的用户细分工具之一。用户细分成功地用于活动分析,网站/产品/服务推荐,或网站使用优化。这种类型的分析对web性能分析、web可用性或可访问性也很有帮助。有各种软件可用于用户行为分析或用于分析用户与网站的交互。然而,它们中的大多数都是基于诸如点击率,流行路径识别等信息的统计测量来进行用户细分。本文提出了面向用户细分的网站社区分析方法。分析是基于用户在网站上的相似行为。针对相似行为模式的识别,提出了基于序列模式挖掘方法与聚类相结合的基于广义后缀树数据结构的算法。
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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