尼日利亚新闻网站仇恨言论评论的批判性话语分析

Frank Onuh
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引用次数: 1

摘要

尽管仇恨言论已成为一种全球现象,但组织和个人发现很难给出一个普遍的定义,也很难找到检测技术和分类。这一挑战造成了一个空白,使许多国家,特别是尼日利亚难以制定反对仇恨言论的立法。在这项研究中,研究人员分析并分类了来自两个尼日利亚新闻网站的仇恨言论评论,以描述、分类和识别普遍的仇恨言论主题。识别出语料库中出现频率最高的单词。数据收集采用观察法和描述性方法,分析采用定性和定量方法。研究结果表明,在尼日利亚,种族关系是引发仇恨言论最常见的因素,而用于强调他人负面评价(EON)的第二人称代词“你”是出现频率最高的词。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Critical Discourse Analysis of Hate Speech Comments on Nigerian News Websites
Though hate speech has become a global phenomenon, organisations and individuals find it difficult to come up with a universal definition, or with detection techniques and classifications. This challenge has created a lacuna which has made legislation against hate speech difficult in many countries, especially Nigeria. In this study, the researcher analysed and categorised hate speech comments from two Nigerian news websites with a view to describing, categorising and identifying prevalent hate speech themes. Words with the highest frequency of occurrence in the corpus are identified. Observation and descriptive methods were used for data collection while both qualitative and quantitative approaches were adopted for analyses. The findings of the study showed that ethnic affiliation is the most common trigger of hate speech comments in Nigeria while the second person pronoun “you” used to emphasise others’ negative (EON) is the word with the highest frequency.
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