Online trolls increase social costs and cause psychological damage to individuals. With the proliferation of automated accounts making use of bots for trolling, it is difficult for targeted individual users to handle the situation both quantitatively and qualitatively. To address this issue, we focus on automating the method to counter trolls, as counter responses to combat trolls encourage community users to maintain ongoing discussion without compromising freedom of expression. For this purpose, we propose a novel dataset for automatic counter response generation. In particular, we constructed a pair-wise dataset that includes troll comments and counter responses with labeled response strategies, which enables models fine-tuned on our dataset to generate responses by varying counter responses according to the specified strategy. We conducted three tasks to assess the effectiveness of our dataset and evaluated the results through both automatic and human evaluation. In human evaluation, we demonstrate that the model fine-tuned on our dataset shows a significantly improved performance in strategy-controlled sentence generation.
翻译:在线巨魔增加了社会成本,对个人造成了心理损害。随着自动账户的激增,利用巨魔来进行推车,目标个人用户很难从数量和质量上处理这种情况。为了解决这一问题,我们侧重于打击巨魔的方法自动化,因为对打击巨魔的反反应鼓励社区用户在不损害言论自由的情况下保持持续讨论。为此目的,我们建议为自动反反应生成建立一个新型数据集。特别是,我们建立了一个配对式数据集,包括巨魔评论和带有标签反应战略的对应反应,使模型能够根据我们的数据集进行微调,以根据具体战略的不同对应反应产生反应。我们执行了三项任务,评估我们数据集的效力,并通过自动和人文评价评价评价结果。在人类评价中,我们显示,对我们的数据集进行微调的模型显示,在战略控制下句生成方面业绩显著改善。