Topic Shift Detection in Chinese Dialogues: Corpus and Benchmark

Jian-Dong Lin, Yaxin Fan, Feng Jiang, Xiaomin Chu, Peifeng Li
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引用次数: 2

Abstract

Dialogue topic shift detection is to detect whether an ongoing topic has shifted or should shift in a dialogue, which can be divided into two categories, i.e., response-known task and response-unknown task. Currently, only a few investigated the latter, because it is still a challenge to predict the topic shift without the response information. In this paper, we first annotate a Chinese Natural Topic Dialogue (CNTD) corpus consisting of 1308 dialogues to fill the gap in the Chinese natural conversation topic corpus. And then we focus on the response-unknown task and propose a teacher-student framework based on hierarchical contrastive learning to predict the topic shift without the response. Specifically, the response at high-level teacher-student is introduced to build the contrastive learning between the response and the context, while the label contrastive learning is constructed at low-level student. The experimental results on our Chinese CNTD and English TIAGE show the effectiveness of our proposed model.
汉语对话中的话题转移检测:语料库和基准
对话话题移位检测是检测对话中正在进行的话题是否已经移位或应该移位,可分为两类,即响应已知任务和响应未知任务。目前,对后者的研究很少,因为在没有响应信息的情况下预测话题转移仍然是一个挑战。本文首先对包含1308个对话的汉语自然话题对话(CNTD)语料库进行了注释,填补了汉语自然对话主题语料库的空白。在此基础上,提出了一种基于层次对比学习的师生关系框架来预测无回应的话题转移。具体而言,我们引入了高水平师生的反应来构建反应与语境的对比学习,而在低水平学生中构建了标签对比学习。在中文CNTD和英文TIAGE上的实验结果表明了该模型的有效性。
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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