Identifying Reply-to Relation in Textual Group Chat using Unlabeled Dialogue Scripts and Next Sentence Prediction

Junjie Shan, Yoko Nishihara, Yihong Han
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Abstract

With instant message (IM) software becoming an important part of work and study, more and more research has begun to aim at supporting people's communication by analyzing their chat messages, such as topic provision and relationship sustainment. As the essential step for achieving these research works, the first task is to identify the relations between those large amounts of chat messages, especially in the situation of group chats. In this paper, we propose a method to identify the “reply-to” relations in IM's group chat from unlabeled textual data by using the next sentence prediction (NSP) approach. First, we proposed a method of automatically sampling two messages with and without the “reply-to” relation from unlabeled dialogue scripts to prepare the training data. Second, we built and trained three settings of the NSP model through the training data to identify the “reply-to” relations between two text chat messages. These NSP models were based on the pre-trained Japanese BERT (bidirectional encoder representation from transformers) model. Last, we evaluated the trained models through actual text group chat data with manual labels. The evaluation data contains 444 textual chat messages from three chat groups, each group has three chat members. Evaluation results showed that the models reached a max accuracy up to 69.6%, higher than past methods, and the top F1 score is 0.558.
使用未标记对话脚本和下一句预测识别文本组聊天中的回复关系
随着即时通讯软件成为工作和学习的重要组成部分,越来越多的研究开始着眼于通过分析人们的聊天信息来支持人们的交流,如话题提供和关系维持。作为完成这些研究工作的必要步骤,首先要确定这些大量的聊天信息之间的关系,特别是在群聊的情况下。本文提出了一种利用下句预测(NSP)方法从未标记文本数据中识别IM群聊中的“回复”关系的方法。首先,我们提出了一种从未标记的对话脚本中自动抽取具有和不具有“回复”关系的两条消息的方法来准备训练数据。其次,我们通过训练数据构建并训练了NSP模型的三种设置,以识别两条文字聊天消息之间的“回复”关系。这些NSP模型是基于预训练的日本BERT(双向编码器表示从变压器)模型。最后,我们通过带有手动标签的实际文本群聊天数据来评估训练好的模型。评估数据包含来自三个聊天组的444条文字聊天消息,每个聊天组有三个聊天成员。评价结果表明,模型的最大准确率达到69.6%,高于以往方法,最高F1得分为0.558。
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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