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A Conglomerate Relational Fuzzy Approach for Discovering Web User Session Clusters from Web Server Logs

机译:一种从Web服务器日志中发现Web用户会话群集的综合关系模糊方法

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Clustering of web user sessions is extremely significant to comprehend their surfing activities on the internet. Users with similar browsing behaviour are grouped together, and further analysis of discovered user groups by domain experts may generate usable and actionable knowledge. In this paper, a conglomerative clustering approach is presented to identify web user session clusters from web server access logs, based on their browsing behaviour. Presented algorithm captures essential ideas from subtractive and relational fuzzy c-mean clustering algorithm.This algorithm works in two phases, in the first phase, it automatically identifies the number of potential clusters based on the successively subtractive potential density function value of each relational data and their respective centres (centroid). In the second phase, it assigns fuzzy membership values to from fuzzy clusters from a relational matrix. The presented algorithm is applied on an augmented session dissimilarity matrix obtained from an openly accessible NASA web server log data..
机译:Web用户会话的群集对于理解他们在Internet上的冲浪活动非常重要。具有相似浏览行为的用户被分组在一起,并且领域专家对发现的用户组进行进一步分析可能会生成可用和可操作的知识。在本文中,提出了一种综合聚类方法,用于根据Web服务器访问日志的浏览行为来识别Web用户会话群集。提出的算法从减法和关系模糊c均值聚类算法中捕获了基本思想,该算法分两个阶段工作,在第一阶段,它根据每个关系数据的相减电位势函数值自动识别潜在簇数。它们各自的中心(质心)。在第二阶段,它将模糊隶属度值分配给来自关系矩阵的模糊聚类。所提出的算法应用于从公开访问的NASA Web服务器日志数据获得的增强的会话相异性矩阵上。

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