Honey Christopher J, Newman Ehren L, Schapiro Anna C
Department of Psychological and Brain Sciences, Johns Hopkins University, Baltimore, MD, USA.
Department of Psychological and Brain Sciences, Indiana University, Bloomington, IN, USA.
Netw Neurosci. 2017 Dec 1;1(4):339-356. doi: 10.1162/NETN_a_00024. eCollection 2018 Winter.
Brains construct internal models that support perception, prediction, and action in the external world. Individual circuits within a brain also learn internal models of the local world of input they receive, in order to facilitate efficient and robust representation. How are these internal models learned? We propose that learning is facilitated by continual switching between internally biased and externally biased modes of processing. We review computational evidence that this mode-switching can produce an error signal to drive learning. We then consider empirical evidence for the instantiation of mode-switching in diverse neural systems, ranging from subsecond fluctuations in the hippocampus to wake-sleep alternations across the whole brain. We hypothesize that these internal/external switching processes, which occur at multiple scales, can drive learning at each scale. This framework predicts that (a) slower mode-switching should be associated with learning of more temporally extended input features and (b) disruption of switching should impair the integration of new information with prior information.
大脑构建支持对外界进行感知、预测和行动的内部模型。大脑中的各个神经回路也会学习它们所接收输入的局部世界的内部模型,以便促进高效且稳健的表征。这些内部模型是如何学习的呢?我们提出,通过在内部偏向和外部偏向的处理模式之间持续切换,学习过程得以促进。我们回顾了计算证据,表明这种模式切换能够产生驱动学习的误差信号。然后,我们考虑了模式切换在各种神经系统中实例化的经验证据,范围从海马体中的亚秒级波动到全脑的清醒 - 睡眠交替。我们假设,这些在多个尺度上发生的内部/外部切换过程能够驱动每个尺度上的学习。该框架预测:(a)较慢的模式切换应与更具时间延展性的输入特征的学习相关联;(b)切换的中断应会损害新信息与先前信息的整合。