利用情感-语义关联生成同情反应

Zhou Yang, Zhaochun Ren, Yufeng Wang, Xiaofei Zhu, Zhihao Chen, Tiecheng Cai, Yunbing Wu, Yisong Su, Sibo Ju, Xiangwen Liao
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引用次数: 2

摘要

移情反应生成旨在通过从对话语言中理解说话者的情绪感受来生成移情反应。最近的方法捕捉交际者语言中的情感词,并将其构建为静态向量,以感知细微的情感。然而,语言学研究表明,语言中的情感词是动态的,与语法中的其他语法语义角色(即有语义的词)有关联。以往的方法忽略了这两个特点,容易导致对情感的误解和对关键语义的忽视。针对这一问题,我们提出了一种动态情感-语义关联模型(ESCM),用于移情对话生成任务。ESCM 通过上下文和情感的交互作用构建动态情感-语义向量。我们引入了依赖树来反映情感与语义之间的相关性。在动态情感语义向量和依赖树的基础上,我们提出了一种动态相关图卷积网络,用于指导模型学习对话中的语境含义并生成共情回应。在 EMPATHETIC-DIALOGUES 数据集上的实验结果表明,ESCM 能更准确地理解语义和情感,并表达出流畅、翔实的共情反应。我们的分析结果还表明,情感和语义之间的关联在对话中经常被使用,这对移情感知和表达具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Emotion-Semantic Correlations for Empathetic Response Generation
Empathetic response generation aims to generate empathetic responses by understanding the speaker's emotional feelings from the language of dialogue. Recent methods capture emotional words in the language of communicators and construct them as static vectors to perceive nuanced emotions. However, linguistic research has shown that emotional words in language are dynamic and have correlations with other grammar semantic roles, i.e., words with semantic meanings, in grammar. Previous methods overlook these two characteristics, which easily lead to misunderstandings of emotions and neglect of key semantics. To address this issue, we propose a dynamical Emotion-Semantic Correlation Model (ESCM) for empathetic dialogue generation tasks. ESCM constructs dynamic emotion-semantic vectors through the interaction of context and emotions. We introduce dependency trees to reflect the correlations between emotions and semantics. Based on dynamic emotion-semantic vectors and dependency trees, we propose a dynamic correlation graph convolutional network to guide the model in learning context meanings in dialogue and generating empathetic responses. Experimental results on the EMPATHETIC-DIALOGUES dataset show that ESCM understands semantics and emotions more accurately and expresses fluent and informative empathetic responses. Our analysis results also indicate that the correlations between emotions and semantics are frequently used in dialogues, which is of great significance for empathetic perception and expression.
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