Modeling Annotator Perspective and Polarized Opinions to Improve Hate Speech Detection

S. Akhtar, Valerio Basile, V. Patti
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引用次数: 40

Abstract

In this paper we propose an approach to exploit the fine-grained knowledge expressed by individual human annotators during a hate speech (HS) detection task, before the aggregation of single judgments in a gold standard dataset eliminates non-majority perspectives. We automatically divide the annotators into groups, aiming at grouping them by similar personal characteristics (ethnicity, social background, culture etc.). To serve a multi-lingual perspective, we performed classification experiments on three different Twitter datasets in English and Italian languages. We created different gold standards, one for each group, and trained a state-of-the-art deep learning model on them, showing that supervised models informed by different perspectives on the target phenomena outperform a baseline represented by models trained on fully aggregated data. Finally, we implemented an ensemble approach that combines the single perspective-aware classifiers into an inclusive model. The results show that this strategy further improves the classification performance, especially with a significant boost in the recall of HS prediction.
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建模注释者视角和极化观点以改进仇恨言论检测
在本文中,我们提出了一种方法,在金标准数据集中的单个判断消除非多数观点之前,在仇恨言论(HS)检测任务中利用单个人类注释者表达的细粒度知识。我们自动将注释者分成小组,目的是根据相似的个人特征(种族、社会背景、文化等)对他们进行分组。为了提供多语言视角,我们在英语和意大利语的三个不同的Twitter数据集上进行了分类实验。我们为每一组创建了不同的黄金标准,并在其上训练了一个最先进的深度学习模型,结果表明,基于目标现象的不同视角的监督模型优于基于完全聚合数据训练的模型所代表的基线。最后,我们实现了一种集成方法,该方法将单个感知视角的分类器组合到一个包含模型中。结果表明,该策略进一步提高了分类性能,特别是HS预测的召回率显著提高。
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