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Hybrid Curriculum Learning for Emotion Recognition in Conversation

About

Emotion recognition in conversation (ERC) aims to detect the emotion label for each utterance. Motivated by recent studies which have proven that feeding training examples in a meaningful order rather than considering them randomly can boost the performance of models, we propose an ERC-oriented hybrid curriculum learning framework. Our framework consists of two curricula: (1) conversation-level curriculum (CC); and (2) utterance-level curriculum (UC). In CC, we construct a difficulty measurer based on "emotion shift" frequency within a conversation, then the conversations are scheduled in an "easy to hard" schema according to the difficulty score returned by the difficulty measurer. For UC, it is implemented from an emotion-similarity perspective, which progressively strengthens the model's ability in identifying the confusing emotions. With the proposed model-agnostic hybrid curriculum learning strategy, we observe significant performance boosts over a wide range of existing ERC models and we are able to achieve new state-of-the-art results on four public ERC datasets.

Lin Yang, Yi Shen, Yue Mao, Longjun Cai• 2021

Related benchmarks

TaskDatasetResultRank
Emotion Recognition in ConversationIEMOCAP (test)
Weighted Average F1 Score68.73
154
Emotion Recognition in ConversationMELD
Weighted Avg F163.89
137
Conversational Emotion RecognitionIEMOCAP
Weighted Average F1 Score68.73
129
Emotion Recognition in ConversationMELD (test)
Weighted F166.18
118
Emotion DetectionEmoryNLP (test)
Weighted-F10.4611
96
Dialogue Emotion DetectionEmoryNLP
Weighted Avg F139.82
80
Emotion Recognition in ConversationDailyDialog (test)--
16
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