Conversation Modeling to Predict Derailment

Jiaqing Yuan, Munindar P. Singh
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Abstract

Conversations among online users sometimes derail, i.e., break down into personal attacks. Derailment interferes with the healthy growth of communities in cyberspace. The ability to predict whether an ongoing conversation will derail could provide valuable advance, even real-time, insight to both interlocutors and moderators. Prior approaches predict conversation derailment retrospectively without the ability to forestall the derailment proactively. Some existing works attempt to make dynamic predictions as the conversation develops, but fail to incorporate multisource information, such as conversational structure and distance to derailment. We propose a hierarchical transformer-based framework that combines utterance-level and conversation-level information to capture fine-grained contextual semantics. We propose a domain-adaptive pretraining objective to unite conversational structure information and a multitask learning scheme to leverage the distance from each utterance to derailment. An evaluation of our framework on two conversation derailment datasets shows an improvement in F1 score for the prediction of derailment. These results demonstrate the effectiveness of incorporating multisource information for predicting the derailment of a conversation.
会话建模预测脱轨
在线用户之间的对话有时会脱轨,也就是说,会演变成人身攻击。出轨会干扰网络空间社区的健康发展。预测正在进行的对话是否会脱轨的能力可以为对话者和主持人提供有价值的进步,甚至是实时的洞察力。先前的方法是回顾性地预测谈话的脱轨,而没有能力预先阻止脱轨。一些现有的研究试图对对话的发展进行动态预测,但未能纳入多源信息,如对话结构和离出轨的距离。我们提出了一个基于层次转换器的框架,该框架结合了话语级和会话级信息来捕获细粒度的上下文语义。我们提出了一个领域自适应的预训练目标来统一会话结构信息,并提出了一个多任务学习方案来利用从每个话语到脱轨的距离。对我们的框架在两个会话脱轨数据集上的评估显示,脱轨预测的F1分数有所提高。这些结果证明了结合多源信息预测会话脱轨的有效性。
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