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A Kind of Hierarchical K-means Web Log Clustering Algorithm

机译:一种分层的K均值Web日志聚类算法

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摘要

Clustering techniques are often used in Web log mining to analyze user's interest on the web pages. Based on the analysis of advantages and disadvantages of the application of classic clustering algorithm in Web log data mining, the paper brought out a kind of hierarchical K-means Web log clustering algorithm, which integrated K-means clustering algorithm and cohesion-based hierarchical clustering algorithm and overcame shortcoming of high time complexity of hierarchical clustering algorithm. The clustering effect of the algorithm is better than K-means clustering and fit for clustering process of large amount data. The result analysis of practical Web log data clustering also proves the validity of the algorithm.
机译:群集技术通常用于Web日志挖掘中,以分析用户对网页的兴趣。在分析经典聚类算法在Web日志数据挖掘中应用的优缺点的基础上,提出了一种K-means分层Web日志聚类算法,将K-means聚类算法和基于内聚的层次聚类相结合克服了层次聚类算法时间复杂度高的缺点。该算法的聚类效果优于K-means聚类,适合于大量数据的聚类过程。实际的Web日志数据聚类的结果分析也证明了该算法的有效性。

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