Emotion analysis in socially unacceptable discourse

Jasmin Franza, Bojan Evkoski, Darja Fišer
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引用次数: 2

Abstract

Texts often express the writer’s emotional state, and it was shown that emotion information has potential for hate speech detection and analysis. In this work, we present a methodology for quantitative analysis of emotion in text. We define a simple, yet effective metric for an overall emotional charge of text based on the NRC Emotion Lexicon and Plutchik’s eight basic emotions. Using this methodology, we investigate the emotional charge of content with socially unacceptable discourse (SUD), as a distinct and potentially harmful type of text which is spreading on social media. We experiment with the proposed method on a corpus of Facebook comments, resulting in four datasets in two languages, namely English and Slovene, and two discussion topics, LGBT+ rights, and the European Migrants crisis. We reveal that SUD content is significantly more emotional than non-SUD comments. Moreover, we show differences in the expression of emotions depending on the language, topic, and target of the comments. Finally, to underpin the findings of the quantitative investigation of emotions, we perform a qualitative analysis of the corpus, exploring in more detail the most frequent emotional words of each emotion, for all four datasets. The qualitative analysis shows that the source of emotions in SUD texts heavily depends on the topic of discussion, with substantial overlaps between languages.
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社会不可接受话语中的情感分析
文本往往表达了作者的情绪状态,研究表明情绪信息具有检测和分析仇恨言论的潜力。在这项工作中,我们提出了一种定量分析文本情感的方法。我们基于NRC情感词典和Plutchik的八种基本情感定义了一个简单而有效的文本整体情感负荷度量。使用这种方法,我们研究了社会不可接受话语(SUD)内容的情感负荷,作为一种独特的、潜在有害的文本类型,正在社交媒体上传播。我们在一个Facebook评论语料库上对提出的方法进行了实验,得到了英语和斯洛文尼亚语两种语言的四个数据集,以及两个讨论主题,LGBT+权利和欧洲移民危机。我们发现,南德意志的内容明显比非南德意志的评论更情绪化。此外,根据评论的语言、话题和目标,我们显示了情感表达的差异。最后,为了支持情绪定量调查的发现,我们对语料库进行了定性分析,更详细地探索了所有四个数据集中每种情绪中最常见的情感词汇。定性分析表明,SUD文本中情绪的来源在很大程度上取决于讨论的主题,语言之间存在大量重叠。
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