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Discovering User Profiles for Web Personalized Recommendation

机译:发现Web个性化推荐的用户配置文件

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With the growing popularity of the World Wide Web, large volume of user access data has been gathered automatically by Web servers and stored in Web logs. Discovering and understanding user behavior patterns from log files can provide Web personalized recommendation services. In this paper, a novel clustering method is presented for log files called Clustering large Weblog based on Key Path Model (CWKPM), which is based on user browsing key path model, to get user behavior profiles. Compared with the previous Boolean model, key path model considers the major features of users' accessing to the Web: ordinal, contiguous and duplicate. Moreover, for clustering, it has fewer dimensions. The analysis and experiments show that CWKPM is an efficient and effective approach for clustering large and high-dimension Web logs.
机译:随着万维网的日益普及,Web服务器已自动收集了大量用户访问数据并将其存储在Web日志中。从日志文件中发现和理解用户行为模式可以提供Web个性化推荐服务。本文提出了一种基于用户浏览键路径模型的基于键路径模型(CWKPM)的日志文件聚类方法,称为聚类大型Weblog,以获取用户行为配置文件。与以前的布尔模型相比,关键路径模型考虑了用户访问Web的主要特征:顺序,连续和重复。而且,对于集群而言,它具有较少的维度。分析和实验表明,CWKPM是对大型和高级别Web日志进行聚类的一种有效方法。

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