2023
DOI: 10.3233/faia230453
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FATRER: Full-Attention Topic Regularizer for Accurate and Robust Conversational Emotion Recognition

Yuzhao Mao,
Di Lu,
Yang Zhang
et al.

Abstract: This paper concentrates on the understanding of interlocutors’ emotions evoked in conversational utterances. Previous studies in this literature mainly focus on more accurate emotional predictions, while ignoring model robustness when the local context is corrupted by adversarial attacks. To maintain robustness while ensuring accuracy, we propose an emotion recognizer augmented by a full-attention topic regularizer, which enables an emotion-related global view when modeling the local context in a conversation.… Show more

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