AnnoBERT: Effectively Representing Multiple Annotators’ Label Choices to Improve Hate Speech Detection

Wenjie Yin, Vibhor Agarwal, Aiqi Jiang, Arkaitz Zubiaga, Nishanth Sastry
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引用次数: 2

Abstract

Supervised machine learning approaches often rely on a "ground truth" label. However, obtaining one label through majority voting ignores the important subjectivity information in tasks such hate speech detection. Existing neural network models principally regard labels as categorical variables, while ignoring the semantic information in diverse label texts. In this paper, we propose AnnoBERT, a first-of-its-kind architecture integrating annotator characteristics and label text with a transformer-based model to detect hate speech, with unique representations based on each annotator's characteristics via Collaborative Topic Regression (CTR) and integrate label text to enrich textual representations. During training, the model associates annotators with their label choices given a piece of text; during evaluation, when label information is not available, the model predicts the aggregated label given by the participating annotators by utilising the learnt association. The proposed approach displayed an advantage in detecting hate speech, especially in the minority class and edge cases with annotator disagreement. Improvement in the overall performance is the largest when the dataset is more label-imbalanced, suggesting its practical value in identifying real-world hate speech, as the volume of hate speech in-the-wild is extremely small on social media, when compared with normal (non-hate) speech. Through ablation studies, we show the relative contributions of annotator embeddings and label text to the model performance, and tested a range of alternative annotator embeddings and label text combinations.
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有效地表示多个注释者的标签选择,以提高仇恨言论检测
监督式机器学习方法通常依赖于“基本事实”标签。然而,通过多数投票获得一个标签忽略了仇恨言论检测等任务中重要的主观性信息。现有的神经网络模型主要将标签作为分类变量,而忽略了不同标签文本中的语义信息。在本文中,我们提出了一种集成注释者特征和标签文本与基于转换器的模型来检测仇恨言论的首个架构AnnoBERT,通过协作主题回归(CTR)基于每个注释者的特征具有独特的表示,并集成标签文本以丰富文本表示。在训练过程中,模型将标注者与给定文本的标签选择相关联;在评估过程中,当标签信息不可用时,该模型利用学习到的关联预测参与注释者给出的聚合标签。该方法在检测仇恨言论方面具有优势,特别是在少数族裔和注释者意见不一致的边缘情况下。当数据集标签不平衡时,整体性能的改善最大,这表明它在识别现实世界的仇恨言论方面具有实用价值,因为与正常(非仇恨)言论相比,社交媒体上的野生仇恨言论的数量非常少。通过消融研究,我们展示了注释器嵌入和标签文本对模型性能的相对贡献,并测试了一系列替代的注释器嵌入和标签文本组合。
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