Solovev Kirill, Pröllochs Nicolas
JLU Giessen, Licher Straße 62, D-35394 Giessen, Germany.
PNAS Nexus. 2022 Dec 7;2(1):pgac281. doi: 10.1093/pnasnexus/pgac281. eCollection 2023 Jan.
Hate speech on social media threatens the mental health of its victims and poses severe safety risks to modern societies. Yet, the mechanisms underlying its proliferation, though critical, have remained largely unresolved. In this work, we hypothesize that moralized language predicts the proliferation of hate speech on social media. To test this hypothesis, we collected three datasets consisting of = 691,234 social media posts and ∼35.5 million corresponding replies from Twitter that have been authored by societal leaders across three domains (politics, news media, and activism). Subsequently, we used textual analysis and machine learning to analyze whether moralized language carried in is linked to differences in the prevalence of hate speech in the corresponding . Across all three datasets, we consistently observed that higher frequencies of moral and moral-emotional words predict a higher likelihood of receiving hate speech. On average, each additional moral word was associated with between 10.76% and 16.48% higher odds of receiving hate speech. Likewise, each additional moral-emotional word increased the odds of receiving hate speech by between 9.35 and 20.63%. Furthermore, moralized language was a robust out-of-sample predictor of hate speech. These results shed new light on the antecedents of hate speech and may help to inform measures to curb its spread on social media.
社交媒体上的仇恨言论威胁着受害者的心理健康,并给现代社会带来严重的安全风险。然而,尽管其扩散背后的机制至关重要,但在很大程度上仍未得到解决。在这项研究中,我们假设道德化语言预示着社交媒体上仇恨言论的扩散。为了验证这一假设,我们收集了三个数据集,其中包括来自推特的691,234条社交媒体帖子以及约3550万条相应回复,这些帖子和回复由来自政治、新闻媒体和激进主义这三个领域的社会领袖撰写。随后,我们使用文本分析和机器学习来分析帖子中所包含的道德化语言是否与相应回复中仇恨言论的流行程度差异相关。在所有这三个数据集中,我们一致观察到,道德和道德情感词汇的出现频率越高,收到仇恨言论的可能性就越大。平均而言,每增加一个道德词汇,收到仇恨言论的几率就会高出10.76%至16.48%。同样,每增加一个道德情感词汇,收到仇恨言论的几率就会提高9.35%至20.63%。此外,道德化语言是仇恨言论的一个强大的样本外预测指标。这些结果为仇恨言论的成因提供了新的见解,并可能有助于为遏制其在社交媒体上传播的措施提供参考。