Topic Segmentation for Interview Dialogue System

Taiga Kirihara, Kazuyuki Matsumoto, M. Sasayama, Minoru Yoshida, K. Kita
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引用次数: 1

Abstract

In this study, topic segmentation was performed by referring to the interview dialogue corpus. Utterance intention tags were added to the existing interview dialogue corpus, and uttered sentences were vectorized using BERT, Sentence BERT, and Distil BERT. In addition, topic classification was performed using the utterance intention tags and the features of the preceding and following uttered sentences. Consequently, the greatest accuracy was achieved when the utterance intention tag was used with DistilBERT.
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访谈对话系统的话题分割
在本研究中,我们参考访谈对话语料库进行话题分割。在现有的访谈对话语料库中添加话语意图标签,并使用BERT、Sentence BERT和蒸馏BERT对所发出的句子进行矢量化。此外,利用话语意图标签和前后句子的特征进行主题分类。因此,当话语意图标签与蒸馏酒一起使用时,达到了最高的准确性。
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