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A Fusion Model of Multi-data Sources for User Profiling in Social Media

机译:用于社交媒体用户分析的多数据源的融合模型

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User profiling in social media plays an important role in different applications. Most of the existing approaches for user profiling are based on user-generated messages, which is not sufficient for inferring user attributes. With the continuous accumulation of data in social media, integrating multi-data sources has become the inexorable trend for precise user profiling. In this paper, we take advantage of text messages, user metadata, followee information and network representations. In order to integrate seamlessly multi-data sources, we propose a novel fusion model that effectively captures the complementarity and diversity of different sources. In addition, we address the problem of friendship-based network from previous studies and introduce celebrity ties which enrich the social network and boost the connectivity of different users. Experimental results show that our method outperforms several state-of-the-art methods on a real-world dataset.
机译:社交媒体中的用户分析在不同的应用中起着重要作用。大多数用于用户分析的现有方法都基于用户生成的消息,这不足以推断用户属性。随着社交媒体中的数据持续累积,集成了多数据源已成为精确用户分析的无可等待的趋势。在本文中,我们利用了短信,用户元数据,追随者信息和网络表示。为了整合无缝多数据源,我们提出了一种新的融合模型,有效地捕获了不同来源的互补性和多样性。此外,我们解决了以前研究的基于友谊的网络问题,并介绍了广大社会网络的名人关系,并提高了不同用户的连接。实验结果表明,我们的方法优于现实世界数据集的几种最先进的方法。

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