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Papers/DialogueCRN: Contextual Reasoning Networks for Emotion Rec...

DialogueCRN: Contextual Reasoning Networks for Emotion Recognition in Conversations

Dou Hu, Lingwei Wei, Xiaoyong Huai

2021-06-03ACL 2021 5Emotion Recognition in ConversationEmotion Recognition
PaperPDFCode(official)Code

Abstract

Emotion Recognition in Conversations (ERC) has gained increasing attention for developing empathetic machines. Recently, many approaches have been devoted to perceiving conversational context by deep learning models. However, these approaches are insufficient in understanding the context due to lacking the ability to extract and integrate emotional clues. In this work, we propose novel Contextual Reasoning Networks (DialogueCRN) to fully understand the conversational context from a cognitive perspective. Inspired by the Cognitive Theory of Emotion, we design multi-turn reasoning modules to extract and integrate emotional clues. The reasoning module iteratively performs an intuitive retrieving process and a conscious reasoning process, which imitates human unique cognitive thinking. Extensive experiments on three public benchmark datasets demonstrate the effectiveness and superiority of the proposed model.

Results

TaskDatasetMetricValueModel
Emotion RecognitionEmoryNLPMicro-F141.04DialogueCRN+RoBERTa
Emotion RecognitionEmoryNLPWeighted-F138.79DialogueCRN+RoBERTa
Emotion RecognitionCMU-MOSEI-SentimentAccuracy37.88DialogueCRN
Emotion RecognitionCMU-MOSEI-SentimentWeighted F126.55DialogueCRN
Emotion RecognitionIEMOCAP-4Accuracy81.34DialogueCRN
Emotion RecognitionIEMOCAP-4Weighted F181.28DialogueCRN
Emotion RecognitionMELDAccuracy66.93DialogueCRN+RoBERTa
Emotion RecognitionMELDWeighted-F165.77DialogueCRN+RoBERTa
Emotion RecognitionMELDAccuracy60.73DialogueCRN
Emotion RecognitionMELDWeighted-F158.39DialogueCRN
Emotion RecognitionIEMOCAPAccuracy67.39DialogueCRN+RoBERTa
Emotion RecognitionIEMOCAPWeighted-F167.53DialogueCRN+RoBERTa
Emotion RecognitionIEMOCAPAccuracy66.05DialogueCRN
Emotion RecognitionIEMOCAPWeighted-F166.33DialogueCRN

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