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Requiem for online harassers: Identifying racism from political tweets

机译:在线骚扰者的安魂曲:从政治推文中识别种族主义

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During the last five years, the amount of users of online social networks has increased exponentially. With the growing of users, social problems also arise. Due to the nature of these platforms, specifically Twitter, users can express their ideas in the way they prefer no matter if it is racist or not. As the Twitter CEO says, one of the most difficult things for them is to detect and ban people who harass others. Researches have addressed this issue in recent years. However, it is needed a wider range of strategies to detect racist users and content. In this work, we collect tweets produced by the ego networks of the two former 2016 US Presidential Candidates: Hillary Clinton and Donald Trump, grouped in four datasets. After deleting spammers, we get 84,371 unique users labeled by using two different metrics: Sentiment Word Count and Racist Score. Both of them let us not only to identify users as racists, but also to detect the level of negativism by analyzing their most recent 200 tweets, increasing the effectiveness of the method. Using it, we find the most negative and racist user and the most positive and non-racist user from all datasets. Taking advantage of the topological properties of the ego networks we analyzed, we also verify that our results satisfy the sociologist theory of homophily; where the followers of each candidate represent their homophilous. For a nation as the United States of America, detecting online harassers might help to decrease racism and cyberbullying, social problems that affect their society. A world without online harassers is an utopia, but this is one step to achieve it.
机译:在过去的五年中,在线社交网络的用户数量呈指数增长。随着用户的增长,也出现了社会问题。由于这些平台(特别是Twitter)的性质,无论是否种族主义,用户都可以用自己喜欢的方式表达自己的想法。正如Twitter首席执行官所说,对他们而言,最困难的事情之一就是发现并禁止骚扰他人的人。近年来,研究已经解决了这个问题。但是,需要更广泛的策略来检测种族用户和内容。在这项工作中,我们收集了两个前2016年美国总统候选人的自我网络产生的推文,这些推文被分组在四个数据集中。删除垃圾邮件发送者后,我们获得84,371位唯一用户,这些用户使用两种不同的指标进行了标记:情感词计数和种族主义得分。他们俩都使我们不仅可以将用户识别为种族主义者,还可以通过分析他们最近的200条推文来检测否定主义的程度,从而提高了该方法的有效性。使用它,我们从所有数据集中找到最消极和种族主义的用户,以及最积极和非种族主义的用户。利用我们分析的自我网络的拓扑特性,我们还验证了我们的结果满足同质性的社会学家理论;每个候选人的追随者都代表他们的同志。对于美国这样的国家而言,检测在线骚扰者可能有助于减少影响其社会的种族主义和网络欺凌行为。没有在线骚扰的世界是乌托邦,但这是实现这一目标的一步。

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