论文标题
自小脑的Marr,ITO和Albus模型以来已有50年
50 years since the Marr, Ito, and Albus models of the cerebellum
论文作者
论文摘要
自从David Marr,Masao Ito和James Albus提出了小脑功能模型以来,已经过去了五十年。这些模型共享了一个基本概念,即平行纤维 - 纯Purkinje-cell突触会发生塑料变化,并在感觉运动学习过程中攀登纤维活动。但是,它们在几个重要方面有所不同,包括小脑的整体和互补作用,模式识别与控制为计算目标,突触可塑性的增强与抑郁,教学信号信号与误差信号信号信号信号信号通过攀爬纤维传播,稀疏的扩展膨胀编码,颗粒细胞以及脑内部模型。在这篇综述中,我们根据最近的计算和实验研究评估了三个模型的不同特征。在承认这三个模型大大提高了我们对眼球运动和经典调节中小脑控制机制的理解,我们为小脑的计算框架提出了一个新的方向。也就是说,通过多个内部模型进行层次结构学习。
Fifty years have passed since David Marr, Masao Ito, and James Albus proposed seminal models of cerebellar functions. These models share the essential concept that parallel-fiber-Purkinje-cell synapses undergo plastic changes, guided by climbing-fiber activities during sensorimotor learning. However, they differ in several important respects, including holistic versus complementary roles of the cerebellum, pattern recognition versus control as computational objectives, potentiation versus depression of synaptic plasticity, teaching signals versus error signals transmitted by climbing-fibers, sparse expansion coding by granule cells, and cerebellar internal models. In this review, we evaluate the different features of the three models based on recent computational and experimental studies. While acknowledging that the three models have greatly advanced our understanding of cerebellar control mechanisms in eye movements and classical conditioning, we propose a new direction for computational frameworks of the cerebellum. That is, hierarchical reinforcement learning with multiple internal models.