Emotion recognition in conversation (ERC) aims to detect the emotion for each utterance in a given conversation. The newly proposed ERC models have leveraged pre-trained language models (PLMs) with the paradigm of pre-training and fine-tuning to obtain good performance. However, these models seldom exploit PLMs' advantages thoroughly, and perform poorly for the conversations lacking explicit emotional expressions. In order to fully leverage the latent knowledge related to the emotional expressions in utterances, we propose a novel ERC model CISPER with the new paradigm of prompt and language model (LM) tuning. Specifically, CISPER is equipped with the prompt blending the contextual information and commonsense related to the interlocutor's utterances, to achieve ERC more effectively. Our extensive experiments demonstrate CISPER's superior performance over the state-of-the-art ERC models, and the effectiveness of leveraging these two kinds of significant prompt information for performance gains. To reproduce our experimental results conveniently, CISPER's sourcecode and the datasets have been shared at https://github.com/DeqingYang/CISPER.
翻译:在谈话(ERC)中,情感意识的识别(ERC)旨在检测特定谈话中每一言语的情绪。新提议的ECC模型利用了预先培训的语言模式和训练前和微调模式,取得了良好的表现。然而,这些模式很少充分利用PLM的优势,而且对缺乏明确情感表达的谈话表现表现表现不佳。为了充分利用与情感表达有关的潜在知识,我们提议了一个新型的ECPER模型,以快速和语言模式(LM)调整的新模式。具体地说,CISPER配备了与对话者言论有关的快速融合的背景资料和常识,以更有效地实现ERC。我们的广泛实验显示了CISPER对最新EC模型的优异性表现,以及利用这两种重要的即时信息取得绩效收益的效果。为了方便地复制我们的实验结果,CISPER的源码和数据集已在https://github.com/DeqingYang/CISPER共享。