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Content matters: A study of hate groups detection based on social networks analysis and web mining

机译:内容很重要:基于社交网络分析和网络挖掘的仇恨群体检测研究

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In recent years, with rapid growth of social networking websites, users are very active in these platforms and large amount of data are aggregated. Among those social networking websites, Facebook is the most popular website that has most users. However, in Facebook, the abusing problem is a very critical issue, such as Hate Groups. Therefore, many researchers are devoting on how to detect potential hate groups, such as using the techniques of social networks analysis. However, we believe content is also a very important factors for hate groups detection. Thus, in this paper, we will propose an architecture to for hate groups detection which is based on the technique of Social Networks Analysis and Web Mining (Text Mining; Natural Language Processing). From the experiment result, it shows that content plays an critical role for hate groups detection and the performance is better than the system that just applying social networks analysis.
机译:近年来,随着社交网站的快速发展,用户在这些平台中非常活跃,并且聚集了大量数据。在这些社交网站中,Facebook是拥有最多用户的最受欢迎的网站。但是,在Facebook中,滥用问题是一个非常关键的问题,例如Hate Groups。因此,许多研究人员致力于如何检测潜在的仇恨群体,例如使用社交网络分析技术。但是,我们认为内容也是检测仇恨团体的一个非常重要的因素。因此,在本文中,我们将提出一种基于社交网络分析和Web挖掘(文本挖掘;自然语言处理)技术的仇恨组检测架构。从实验结果可以看出,内容在仇恨群体检测中起着至关重要的作用,其性能要优于仅应用社交网络分析的系统。

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