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Wavelet-Based Clustering of Social-Network Users Using Temporal and Activity Profiles

机译:基于小波的时间和活动档案的社交网络用户聚类

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Encouraged by the success of social networking platforms, more and more enterprises are exploring the use of crowd-sourcing as a method for intra-organization knowledge management. There is not much information about their effectiveness though. While there has been some emphasis on studying friend networks, not much emphasis has been given towards understanding other kinds of user behavior like regularity of access or activity. In this paper we present a wavelet-based clustering method to cluster social-network users into different groups based on their temporal behavior and activity profiles. Cluster characterization reveals the underlying user-group characteristics. User data from web and enterprise social-network platforms have been analyzed.
机译:在社交网络平台成功的鼓舞下,越来越多的企业正在探索使用众包作为组织内知识管理的方法。但是,关于其有效性的信息并不多。尽管一直在研究朋友网络上有一些重点,但并没有过多地强调了解其他类型的用户行为,例如访问或活动的规律性。在本文中,我们提出了一种基于小波的聚类方法,根据社交网络用户的时间行为和活动概况将其分为不同的组。群集特征揭示了潜在的用户组特征。已分析了来自Web和企业社交网络平台的用户数据。

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