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A distributed clustering method to segment micro-blog users on cloud environments

机译:一种在云环境下细分微博用户的分布式集群方法

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With the rapid development of social network analysis (SNA for short), people increasingly pay attention to segment micro-blog users in the SNAs. It's a new trend on classic marketing technique segmentation. In the case of micro-blog, it's useful to get a group of users with a common set of characters and learn what's on their mind. As is usually the case, the standard for measuring the category of the micro-blog users is multi-objective, i.e., the data is high dimensional. If you have a personal micro-blog account, it's easy enough to create the lists that might be most meaningful to you by using generic clustering algorithms. And if your business has Tens of millions of users, the near real-time requirement and the lack of efficient clustering algorithms to identify and distinguish them limits the power and scalability of this approach. To overcome these limitations, in this paper we introduce a novel distributed high dimensional data clustering algorithm based on Map-Reduce framework to distinguish the different communities from the entire social network, called CDGM-Clu. Extensive experiments on real and synthetic datasets show that the CDGM-Clu algorithm is significantly efficient and scalable, and useful for analyzing a large social network data.
机译:随着社交网络分析(简称SNA)的快速发展,人们越来越关注SNA中的细分微博用户。这是经典营销技术细分的新趋势。在微博客的情况下,使一组具有相同字符集的用户并了解他们的想法非常有用。通常,衡量微博用户类别的标准是多目标的,即数据是高维的。如果您拥有个人微博帐户,则可以使用通用群集算法轻松创建对您最有意义的列表。而且,如果您的企业拥有数以千万计的用户,则近乎实时的需求以及缺乏有效的集群算法来识别和区分用户,就限制了这种方法的功能和可扩展性。为了克服这些限制,在本文中,我们介绍了一种新颖的基于Map-Reduce框架的分布式高维数据聚类算法,以区分整个社交网络中的不同社区,称为CDGM-Clu。在真实和合成数据集上的大量实验表明,CDGM-Clu算法非常有效且可扩展,可用于分析大型社交网络数据。

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