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Social media user partitioning based on ensemble clustering

机译:基于集成聚类的社交媒体用户划分

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In Web2.0 era, social media platforms are bearing huge customer base and excessively abundant information resources. On one hand, information consumers spend a lot of time in information search. On the other hand, information providers are seeking effective methods to recognize potential customers, push targeting advertising and provide personalized information services. Generally, mining user-generated content (UGC) to discover user preferences becomes the main channel for user modeling and customer partitioning. However, on social media platforms, user preferences were often manifested in the user-defined tags, online social behaviors as well as the UGC texts. The paper proposed a social-media user partitioning model based on heterogeneous information fusion and ensemble clustering. In the model, online social behaviors and user-defined interest tags are combined with UGC texts respectively to generate basic partitions of social media users. Then, basic partitions are fused into a consensus partition based on the voting mechanism for the final user partitioning. Experiments on real world data sets demonstrate the effectiveness of the proposed model.
机译:在Web2.0时代,社交媒体平台拥有庞大的客户群和过多的信息资源。一方面,信息消费者在信息搜索上花费大量时间。另一方面,信息提供商正在寻求有效的方法来识别潜在客户,推销目标广告并提供个性化信息服务。通常,挖掘用户生成的内容(UGC)以发现用户偏好成为用户建模和客户划分的主要渠道。但是,在社交媒体平台上,用户首选项通常体现在用户定义的标签,在线社交行为以及UGC文本中。提出了一种基于异构信息融合和集成聚类的社交媒体用户划分模型。在该模型中,在线社交行为和用户定义的兴趣标签分别与UGC文本结合,以生成社交媒体用户的基本分区。然后,基于用于最终用户分区的投票机制,将基本分区融合到共识分区中。在现实世界数据集上的实验证明了该模型的有效性。

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