基于拟人学习的暖化医疗情境情感检测口语对话系统

Bo-Hao Su, Ping-Wen Fu, Po-Chuan Lin, Po-Yi Shih, Yuh-Chung Lin, Jhing-Fa Wang, A. Tsai
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引用次数: 3

摘要

这项工作提出了一个基于拟人化学习的情景和情感检测口语对话系统。为了给系统提供更温暖的反馈,我们将情景和情绪检测与口语对话系统相结合。使用部分匹配口语句子检索(PMSSR)实现基于词汇类别的情境和情感检测。此外,提出了一种拟人学习机制,以提高情绪和情境检测的性能。利用基于词汇外检测的机制,通过与用户和网络的交互,对情感和情境数据库进行新词汇的更新。实验结果表明,拟人化学习机制使情境和情绪检测的准确率分别提高了30%和20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A spoken dialogue system with situation and emotion detection based on anthropomorphic learning for warming healthcare d
This work presents a spoken dialogue system with situation and emotion detection based on anthropomorphic learning for warming healthcare. To provide more warming feedback of the system, we combine situation and emotion detection with spoken dialogue system. Situation and emotion detection are based on lexical category using Partial-Matching Spoken Sentence Retrieval (PMSSR). Moreover, an anthropomorphic learning mechanism is proposed to improve the performance of emotion and situation detection. The mechanism based on out-of-vocabulary (OOV) detection is used to update emotion and situation database with new lexicon through interaction with user and internet. The experimental results show that the anthropomorphic learning mechanism increases the accuracy rate of situation and emotion detection by 30% and 20%, respectively.
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