Copenhagen Center for Social Science Data, University of Copenhagen, Copenhagen, Denmark.
Department of Computer Science, University of Copenhagen, Copenhagen, Denmark.
PLoS One. 2022 Oct 26;17(10):e0274317. doi: 10.1371/journal.pone.0274317. eCollection 2022.
Despite attempts to increase gender parity in politics, global efforts have struggled to ensure equal female representation. This is likely tied to implicit gender biases against women in authority. In this work, we present a comprehensive study of gender biases that appear in online political discussion. To this end, we collect 10 million comments on Reddit in conversations about male and female politicians, which enables an exhaustive study of automatic gender bias detection. We address not only misogynistic language, but also other manifestations of bias, like benevolent sexism in the form of seemingly positive sentiment and dominance attributed to female politicians, or differences in descriptor attribution. Finally, we conduct a multi-faceted study of gender bias towards politicians investigating both linguistic and extra-linguistic cues. We assess 5 different types of gender bias, evaluating coverage, combinatorial, nominal, sentimental and lexical biases extant in social media language and discourse. Overall, we find that, contrary to previous research, coverage and sentiment biases suggest equal public interest in female politicians. Rather than overt hostile or benevolent sexism, the results of the nominal and lexical analyses suggest this interest is not as professional or respectful as that expressed about male politicians. Female politicians are often named by their first names and are described in relation to their body, clothing, or family; this is a treatment that is not similarly extended to men. On the now banned far-right subreddits, this disparity is greatest, though differences in gender biases still appear in the right and left-leaning subreddits. We release the curated dataset to the public for future studies.
尽管人们试图增加政治领域的性别均等,但全球的努力仍难以确保女性的平等代表权。这可能与人们对女性权威的隐性性别偏见有关。在这项工作中,我们全面研究了在线政治讨论中出现的性别偏见。为此,我们在 Reddit 上收集了 1000 万条关于男性和女性政治家的评论,从而可以对自动性别偏见检测进行详尽的研究。我们不仅研究了厌恶女性的语言,还研究了其他形式的偏见,例如看似积极的善意性别歧视以及对女性政治家的支配地位,或者描述符归因的差异。最后,我们对政治家的性别偏见进行了多方面的研究,既研究了语言方面的线索,也研究了非语言方面的线索。我们评估了 5 种不同类型的性别偏见,评估了社交媒体语言和话语中存在的覆盖范围、组合、名义、情感和词汇偏见。总的来说,我们发现,与之前的研究相反,覆盖范围和情感偏见表明公众对女性政治家的兴趣是平等的。名义和词汇分析的结果表明,这种兴趣并不像对男性政治家那样具有专业性或尊重性,而不是明显的敌意或善意性别歧视。女性政治家通常只用她们的名字称呼,并且与她们的身体、服装或家庭有关联;而这种待遇不会同样地扩展到男性。在现已被禁止的极右翼子版块上,这种差异最大,尽管在右翼和左翼的子版块上仍然存在性别偏见的差异。我们将经过整理的数据集向公众发布,以供未来的研究使用。