Improving Generalization of Hate Speech Detection Systems to Novel Target Groups via Domain Adaptation

F. Ludwig, Klara Dolos, T. Zesch, E. Hobley
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引用次数: 8

Abstract

Despite recent advances in machine learning based hate speech detection, classifiers still struggle with generalizing knowledge to out-of-domain data samples. In this paper, we investigate the generalization capabilities of deep learning models to different target groups of hate speech under clean experimental settings. Furthermore, we assess the efficacy of three different strategies of unsupervised domain adaptation to improve these capabilities. Given the diversity of hate and its rapid dynamics in the online world (e.g. the evolution of new target groups like virologists during the COVID-19 pandemic), robustly detecting hate aimed at newly identified target groups is a highly relevant research question. We show that naively trained models suffer from a target group specific bias, which can be reduced via domain adaptation. We were able to achieve a relative improvement of the F1-score between 5.8% and 10.7% for out-of-domain target groups of hate speech compared to baseline approaches by utilizing domain adaptation.
基于领域自适应的仇恨语音检测系统泛化方法研究
尽管最近在基于机器学习的仇恨言论检测方面取得了进展,分类器仍然难以将知识推广到域外数据样本。在本文中,我们在干净的实验环境下研究了深度学习模型对不同仇恨言论目标群体的泛化能力。此外,我们评估了三种不同的无监督域适应策略来提高这些能力的有效性。鉴于仇恨的多样性及其在网络世界中的快速动态(例如,在COVID-19大流行期间病毒学家等新目标群体的演变),强有力地检测针对新确定目标群体的仇恨是一个高度相关的研究问题。我们表明,天真训练的模型会受到目标群体特定偏差的影响,这可以通过领域适应来减少。与使用域适应的基线方法相比,我们能够实现域外仇恨言论目标群体的f1得分在5.8%到10.7%之间的相对提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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