Enhancing emotion inference in conversations with commonsense knowledge
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摘要
Existing studies on emotion analysis in conversations have mainly focused on recognizing the emotion of a given utterance. This paper investigates the task of emotion inference in conversations, which explores how the utterances affect the addressee’s emotion, without knowing the addressee’s response yet. While it is straightforward for humans to perceive and reason about the feelings of others in conversations, it is a severe challenge for machines, mainly due to the lack of commonsense knowledge. In this work, we propose to leverage external inferential knowledge to enhance the emotion inference in conversations. Specifically, a conversation modeling module is designed to accumulate information from the conversation history based on the emotional interaction between the addressee and writers. In addition, a knowledge integration strategy is also proposed to integrate the conversation-related commonsense knowledge generated from the event-based knowledge graph. The experiments on three different benchmark conversational datasets demonstrate the effectiveness of the proposed models, and prove the benefits of commonsense knowledge for emotion inference in conversations.
论文关键词:Emotion analysis,Emotion inference in conversations,Conversation modeling,Commonsense knowledge integration
论文评审过程:Received 10 April 2021, Revised 17 August 2021, Accepted 24 August 2021, Available online 26 August 2021, Version of Record 14 September 2021.
论文官网地址:https://doi.org/10.1016/j.knosys.2021.107449