In several papers published in Biological Cybernetics in the 1980s and 1990s, Kawato and colleagues proposed computational models explaining how internal models are acquired in the cerebellum. These models were later supported by neurophysiological experiments using monkeys and neuroimaging experiments involving humans. These early studies influenced neuroscience from basic, sensory-motor control to higher cognitive functions. One of the most perplexing enigmas related to internal models is to understand the neural mechanisms that enable animals to learn large-dimensional problems with so few trials. Consciousness and metacognition -- the ability to monitor one's own thoughts, may be part of the solution to this enigma. Based on literature reviews of the past 20 years, here we propose a computational neuroscience model of metacognition. The model comprises a modular hierarchical reinforcement-learning architecture of parallel and layered, generative-inverse model pairs. In the prefrontal cortex, a distributed executive network called the "cognitive reality monitoring network" (CRMN) orchestrates conscious involvement of generative-inverse model pairs in perception and action. Based on mismatches between computations by generative and inverse models, as well as reward prediction errors, CRMN computes a "responsibility signal" that gates selection and learning of pairs in perception, action, and reinforcement learning. A high responsibility signal is given to the pairs that best capture the external world, that are competent in movements (small mismatch), and that are capable of reinforcement learning (small reward prediction error). CRMN selects pairs with higher responsibility signals as objects of metacognition, and consciousness is determined by the entropy of responsibility signals across all pairs.
翻译:在1980年代和1990年代生物网络杂志上发表的几篇论文中,川口及其同事提出了计算模型,解释如何在小脑中获取内部模型。这些模型后来得到了使用猴子的神经生理实验和涉及人类的神经成像实验的支持。这些早期研究影响神经科学,从基本的、感官运动控制到更高的认知功能。与内部模型有关的最令人困惑的谜题之一是了解能够让动物通过如此少的试验来了解大范围问题的神经机制。觉悟和元化认识 -- -- 监测自己思想的能力可能是这一谜题的解决办法的一部分。根据过去20年的文献审查,我们在这里提出了一种计算神经科学模型。模型包括一个模块级强化学习结构,即平行和分层的、正感化的模型。在前额层,一个分布式的执行网络称为“对正感的现实情况监测网络”(CRMN), 协调了对更高层次模型的参与,这也许是智能模型的精度组合,在感官感官感知和感官感官感官感官感官的感官感应中,一个“矩阵的感官感官感官的感官的感官的感官的感官的感官的感官的感官和感官感官的感官的感官的感官的感。 ”是,在世界的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感官的感。