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AngryBERT: Joint Learning Target and Emotion for Hate Speech Detection

机译:生气伯特:联合学习目标和仇恨语音检测的情感

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Automated hate speech detection in social media is a challenging task that has recently gained significant traction in the data mining and Natural Language Processing community. However, most of the existing methods adopt a supervised approach that depended heavily on the annotated hate speech datasets, which are imbalanced and often lack training samples for hateful content. This paper addresses the research gaps by proposing a novel multitask learning-based model, AngryBERT, which jointly learns hate speech detection with sentiment classification and target identification as secondary relevant tasks. We conduct extensive experiments to augment three commonly-used hate speech detection datasets. Our experiment results show that AngryBERT outperforms state-of-the-art single-task-learning and multitask learning baselines. We conduct ablation studies and case studies to empirically examine the strengths and characteristics of our AngryBERT model and show that the secondary tasks are able to improve hate speech detection.
机译:社交媒体中的自动仇恨语音检测是一个具有挑战性的任务,最近在数据挖掘和自然语言处理社区中获得了显着的牵引力。然而,大多数现有方法采用受监督方法,依赖于注释的仇恨语音数据集,这些方法是不平衡的,并且通常缺乏用于仇恨内容的培训样本。本文通过提出新的MultiStask基于学习的模型,Angrybert来解决研究差距,该模型与情绪分类和目标识别作为二级相关任务,共同学习仇恨语音检测。我们进行广泛的实验来增加三种常用的仇恨语音检测数据集。我们的实验结果表明,愤怒的结果优于最先进的单任务学习和多任务学习基线。我们开展消融研究和案例研究,以凭经验审查我们的愤怒模型的优势和特征,并表明二次任务能够改善仇恨语音检测。

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