Li Ming, Su Yusheng, Huang Hsiu-Yuan, Cheng Jiali, Hu Xin, Zhang Xinmiao, Wang Huadong, Qin Yujia, Wang Xiaozhi, Lindquist Kristen A, Liu Zhiyuan, Zhang Dan
Department of Psychological and Cognitive Sciences, Tsinghua University, Beijing, China.
Tsinghua Laboratory of Brain and Intelligence, Tsinghua University, Beijing, China.
iScience. 2024 Nov 15;27(12):111401. doi: 10.1016/j.isci.2024.111401. eCollection 2024 Dec 20.
Humans no doubt use language to communicate about their emotional experiences, but does language in turn help humans understand emotions, or is language just a vehicle of communication? This study used a form of artificial intelligence (AI) known as large language models (LLMs) to assess whether language-based representations of emotion causally contribute to the AI's ability to generate inferences about the emotional meaning of novel situations. Fourteen attributes of human emotion concept representation were found to be represented by the LLM's distinct artificial neuron populations. By manipulating these attribute-related neurons, we in turn demonstrated the role of emotion concept knowledge in generative emotion inference. The attribute-specific performance deterioration was related to the importance of different attributes in human mental space. Our findings provide a proof-in-concept that even an LLM can learn about emotions in the absence of sensory-motor representations and highlight the contribution of language-derived emotion-concept knowledge for emotion inference.
毫无疑问,人类使用语言来交流他们的情感体验,但语言反过来是否有助于人类理解情感,或者语言仅仅是一种交流工具?本研究使用了一种称为大语言模型(LLMs)的人工智能形式,来评估基于语言的情感表征是否对人工智能生成关于新情境情感意义的推理能力有因果贡献。发现人类情感概念表征的14个属性由大语言模型独特的人工神经元群体来表征。通过操纵这些与属性相关的神经元,我们进而证明了情感概念知识在生成性情感推理中的作用。特定属性的性能下降与不同属性在人类心理空间中的重要性有关。我们的研究结果提供了一个概念验证,即即使是大语言模型在没有感觉运动表征的情况下也能学习情感,并突出了源自语言的情感概念知识对情感推理的贡献。