1. BERT-ERC: Fine-tuning BERT is Enough for Emotion Recognition in Conversation
- Author
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Qin, Xiangyu, Wu, Zhiyu, Cui, Jinshi, Zhang, Tingting, Li, Yanran, Luan, Jian, Wang, Bin, Wang, Li, Qin, Xiangyu, Wu, Zhiyu, Cui, Jinshi, Zhang, Tingting, Li, Yanran, Luan, Jian, Wang, Bin, and Wang, Li
- Abstract
Previous works on emotion recognition in conversation (ERC) follow a two-step paradigm, which can be summarized as first producing context-independent features via fine-tuning pretrained language models (PLMs) and then analyzing contextual information and dialogue structure information among the extracted features. However, we discover that this paradigm has several limitations. Accordingly, we propose a novel paradigm, i.e., exploring contextual information and dialogue structure information in the fine-tuning step, and adapting the PLM to the ERC task in terms of input text, classification structure, and training strategy. Furthermore, we develop our model BERT-ERC according to the proposed paradigm, which improves ERC performance in three aspects, namely suggestive text, fine-grained classification module, and two-stage training. Compared to existing methods, BERT-ERC achieves substantial improvement on four datasets, indicating its effectiveness and generalization capability. Besides, we also set up the limited resources scenario and the online prediction scenario to approximate real-world scenarios. Extensive experiments demonstrate that the proposed paradigm significantly outperforms the previous one and can be adapted to various scenes.
- Published
- 2023