论文标题

在社交媒体上的政治论述中的仇恨言论:各方,性别和种族之间的差异

Hate Speech in the Political Discourse on Social Media: Disparities Across Parties, Gender, and Ethnicity

论文作者

Solovev, Kirill, Pröllochs, Nicolas

论文摘要

社交媒体已成为政治交流必不可少的渠道。但是,政治话语越来越多地以仇恨言论为特征,仇恨言论不仅影响个人政客的声誉,而且影响着整个社会的运作。在这项工作中,我们凭经验分析了Twitter上政治家的帖子回复仇恨言论的数量如何取决于个人特征,例如他们的政党隶属关系,性别和种族。为此,我们采用Twitter的历史API收集美国国会第117届国会议员在六个月以上发布的每条推文。此外,我们收集每条推文的答复,并使用机器学习来预测它们嵌入的仇恨言论。随后,我们实施层次回归模型,以分析具有某些特征的政客是否获得更多的仇恨言论。我们发现,如果推文是由民主党,(ii)白人共和党人和(iii)妇女撰写的(i)有色人种的(i)有色人种撰写的。此外,我们的分析表明,更多的负面情绪(在源推文中)与更多的仇恨言论有关(在回复中)。但是,该协会在各方之间有所不同:消极情绪吸引了民主党人更多的仇恨言论(与共和党人)。总的来说,我们的经验发现表明,根据政党的隶属关系,性别和种族,在社交媒体上对政客的对待有显着差异。

Social media has become an indispensable channel for political communication. However, the political discourse is increasingly characterized by hate speech, which affects not only the reputation of individual politicians but also the functioning of society at large. In this work, we empirically analyze how the amount of hate speech in replies to posts from politicians on Twitter depends on personal characteristics, such as their party affiliation, gender, and ethnicity. For this purpose, we employ Twitter's Historical API to collect every tweet posted by members of the 117th U.S. Congress for an observation period of more than six months. Additionally, we gather replies for each tweet and use machine learning to predict the amount of hate speech they embed. Subsequently, we implement hierarchical regression models to analyze whether politicians with certain characteristics receive more hate speech. We find that tweets are particularly likely to receive hate speech in replies if they are authored by (i) persons of color from the Democratic party, (ii) white Republicans, and (iii) women. Furthermore, our analysis reveals that more negative sentiment (in the source tweet) is associated with more hate speech (in replies). However, the association varies across parties: negative sentiment attracts more hate speech for Democrats (vs. Republicans). Altogether, our empirical findings imply significant differences in how politicians are treated on social media depending on their party affiliation, gender, and ethnicity.

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