Domain-adaptive Graph based on Post-hoc Explanation for Cross-domain Hate Speech Detection

Yushan Jiang, Bin Zhou, Xuechen Zhao, Jiaying Zou, Feng Xie, Liang Li
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Abstract

Hate speech detection is hampered by the scarcity and topical and lexical biases of annotated data, leading to poor generalization. It is imperative to devise a cross-domain approach to solve this problem. The ability to learn transferable knowledge is critical for cross-domain hate speech detection. In this work, We propose a domain-adaptive dependency graph method based on post-hoc explanation (DPDG). We extract post-hoc explanations from fine-tuned BERT classifiers as the importance score for hate representation. Based on these, we construct in-domain graph and cross-domain graph to better learn in-domain hate representation and adapt to the target domain respectively. Finally, we use interactive GCN blocks to interactively and adaptively learn and adjust the domain adaptive graph representation. The results of cross-domain experiments on multiple domains show that our proposed model outperforms competitive baselines in cross-domain hate speech detection.
基于事后解释的域自适应图跨域仇恨语音检测
仇恨言论检测受到标注数据的稀缺性、主题和词汇偏见的阻碍,导致泛化能力差。设计一种跨领域的方法来解决这一问题势在必行。学习可转移知识的能力对于跨领域仇恨语音检测至关重要。在这项工作中,我们提出了一种基于事后解释(DPDG)的领域自适应依赖图方法。我们从微调的BERT分类器中提取事后解释作为仇恨表示的重要性分数。在此基础上,我们分别构建了域内图和跨域图,以更好地学习域内仇恨表示和适应目标域。最后,利用交互式GCN块对域自适应图表示进行交互式自适应学习和调整。在多个领域的跨领域实验结果表明,我们提出的模型在跨领域仇恨语音检测方面优于竞争基准。
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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