Aggregated clustering for grouping of users based on web page navigation behaviour

R. GeethaRamani, P. Revathy, L. Balasubramanian
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引用次数: 2

Abstract

In this epoch, a significant amount of patterns are retrieved using data mining techniques. Clustering is one of the technique that plays an vital role in web mining. This paper works on MSNBC dataset with the average access length of 6. It aims to cluster the users based on their navigation behaviour. An iterative aggregated clustering is proposed, in which various clustering algorithms like EM clustering, farthest first, K-means clustering, density based cluster, filtered cluster are applied on the dataset. The resultant clusters from various algorithms are aggregated correspondingly and the frequency of instances in each cluster is determined. Then the instance with two-third majority is grouped in that cluster. The work revealed that 91% of users clustered in the first iteration under 17 clusters and 99% of users in subsequent iterations in another 17 clusters and rest of the users are grouped as one cluster, resulting 35 hard clusters.
基于网页导航行为的用户分组聚合聚类
在这个时代,使用数据挖掘技术检索了大量的模式。聚类是web挖掘中至关重要的技术之一。本文研究的是平均访问长度为6的MSNBC数据集。它的目的是根据用户的导航行为对用户进行聚类。提出了一种迭代聚类算法,将EM聚类、最远优先聚类、K-means聚类、密度聚类、过滤聚类等聚类算法应用于数据集。将各种算法得到的聚类进行相应的聚合,并确定每个聚类中实例的频率。然后,拥有三分之二多数的实例被分组到该集群中。研究表明,91%的用户在第一次迭代中聚在17个集群下,99%的用户在随后的迭代中聚在另外17个集群中,其余用户被归为一个集群,形成35个硬集群。
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