论文标题

情绪和滥用语言检测的联合建模

Joint Modelling of Emotion and Abusive Language Detection

论文作者

Rajamanickam, Santhosh, Mishra, Pushkar, Yannakoudakis, Helen, Shutova, Ekaterina

论文摘要

在线通信平台的兴起伴随着一些不良效果,例如在线积极和虐待行为的扩散。为了解决这个问题,自然语言处理(NLP)社区已经尝试了一系列滥用检测技术。到目前为止,这些方法在取得了重大成功的同时,仅着重于对评论和在线用户的在线社区的语言特性进行建模,而无视用户的情绪状态以及这可能如何影响他们的语言。但是,后者与虐待行为密不可分。在本文中,我们介绍了第一个情感和滥用语言检测的联合模型,并在多任务学习框架中进行了实验,该框架允许一个任务告知另一个任务。我们的结果表明,结合情感特征会导致跨数据集的滥用检测绩效的显着改善。

The rise of online communication platforms has been accompanied by some undesirable effects, such as the proliferation of aggressive and abusive behaviour online. Aiming to tackle this problem, the natural language processing (NLP) community has experimented with a range of techniques for abuse detection. While achieving substantial success, these methods have so far only focused on modelling the linguistic properties of the comments and the online communities of users, disregarding the emotional state of the users and how this might affect their language. The latter is, however, inextricably linked to abusive behaviour. In this paper, we present the first joint model of emotion and abusive language detection, experimenting in a multi-task learning framework that allows one task to inform the other. Our results demonstrate that incorporating affective features leads to significant improvements in abuse detection performance across datasets.

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