School of Information Science and Engineering, Lanzhou University, Lanzhou, 730000, Gansu, China.
School of Electronics and Information Engineering, Lanzhou Jiaotong University, Lanzhou, 730070, Gansu, China.
Commun Biol. 2024 Apr 22;7(1):487. doi: 10.1038/s42003-024-06162-0.
The phenomenon of semantic satiation, which refers to the loss of meaning of a word or phrase after being repeated many times, is a well-known psychological phenomenon. However, the microscopic neural computational principles responsible for these mechanisms remain unknown. In this study, we use a deep learning model of continuous coupled neural networks to investigate the mechanism underlying semantic satiation and precisely describe this process with neuronal components. Our results suggest that, from a mesoscopic perspective, semantic satiation may be a bottom-up process. Unlike existing macroscopic psychological studies that suggest that semantic satiation is a top-down process, our simulations use a similar experimental paradigm as classical psychology experiments and observe similar results. Satiation of semantic objectives, similar to the learning process of our network model used for object recognition, relies on continuous learning and switching between objects. The underlying neural coupling strengthens or weakens satiation. Taken together, both neural and network mechanisms play a role in controlling semantic satiation.
语义饱和现象是指一个词或短语在被多次重复后失去意义,这是一种众所周知的心理现象。然而,导致这些机制的微观神经计算原理尚不清楚。在这项研究中,我们使用连续耦合神经网络的深度学习模型来研究语义饱和的机制,并使用神经元成分精确地描述这个过程。我们的结果表明,从介观角度来看,语义饱和可能是一个自下而上的过程。与现有的宏观心理学研究表明语义饱和是一个自上而下的过程不同,我们的模拟使用了与经典心理学实验相似的实验范式,并观察到了相似的结果。语义目标的饱和,类似于我们用于对象识别的网络模型的学习过程,依赖于对象的持续学习和切换。底层的神经耦合增强或减弱了饱和。总之,神经和网络机制都在控制语义饱和中发挥了作用。