码交换文本中仇恨言语检测的社会心理特征

Edward Ombui, Lawrence Muchemi, P. Wagacha
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引用次数: 0

摘要

本研究使用自然语言处理方法研究了来自社交媒体的代码转换文本中的仇恨言论识别问题。它探索了训练9个模型的不同特征,并在一个约50k的人工注释数据集中实证地评估了它们在识别仇恨言论方面的预测性。该研究采用了一种新颖的方法来处理这一挑战,通过引入一种分层方法,该方法使用潜在狄利克雷分析来生成主题模型,帮助构建高层次的社会心理特征集,我们将其缩写为PDC。PDC对词族中意义相近的词进行分组,这对于在监督学习模型预处理阶段捕捉编码转换具有重要意义。生成的高级PDC特征基于仇恨言论注释框架[1],该框架在很大程度上受仇恨双工理论[2]的影响。在2012年和2017年肯尼亚总统选举期间生成的推文数据集上使用PDC特征的基于频率的模型获得的结果表明,在识别仇恨言论方面,f得分为83%(精度:81%,召回率:85%)。这项研究意义重大,因为它公开分享了一个独特的仇恨言论代码转换数据集,这对比较研究很有价值。其次,它提供了一种构建新的PDC特征集的方法,用于识别隐藏在代码转换数据中的微妙形式的仇恨言论,而传统方法无法充分识别这些仇恨言论。
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Psychosocial Features for Hate Speech Detection in Code-switched Texts
This study examines the problem of hate speech identification in codeswitched text from social media using a natural language processing approach. It explores different features in training nine models and empirically evaluates their predictiveness in identifying hate speech in a ~50k human-annotated dataset. The study espouses a novel approach to handle this challenge by introducing a hierarchical approach that employs Latent Dirichlet Analysis to generate topic models that help build a high-level Psychosocial feature set that we acronym PDC. PDC groups similar meaning words in word families, which is significant in capturing codeswitching during the preprocessing stage for supervised learning models. The high-level PDC features generated are based on a hate speech annotation framework [1] that is largely informed by the duplex theory of hate [2]. Results obtained from frequency-based models using the PDC feature on the dataset comprising of tweets generated during the 2012 and 2017 presidential elections in Kenya indicate an f-score of 83% (precision: 81%, recall: 85%) in identifying hate speech. The study is significant in that it publicly shares a unique codeswitched dataset for hate speech that is valuable for comparative studies. Secondly, it provides a methodology for building a novel PDC feature set to identify nuanced forms of hate speech, camouflaged in codeswitched data, which conventional methods could not adequately identify.
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