Hayakawa Takashi, Kaneko Takeshi, Aoyagi Toshio
Department of Morphological Brain Science, Graduate School of Medicine, Kyoto University Kyoto, Japan ; CREST, Japan Science and Technology Agency Kawaguchi, Japan.
Department of Morphological Brain Science, Graduate School of Medicine, Kyoto University Kyoto, Japan.
Front Comput Neurosci. 2014 Nov 25;8:143. doi: 10.3389/fncom.2014.00143. eCollection 2014.
A fundamental issue in neuroscience is to understand how neuronal circuits in the cerebral cortex play their functional roles through their characteristic firing activity. Several characteristics of spontaneous and sensory-evoked cortical activity have been reproduced by Infomax learning of neural networks in computational studies. There are, however, still few models of the underlying learning mechanisms that allow cortical circuits to maximize information and produce the characteristics of spontaneous and sensory-evoked cortical activity. In the present article, we derive a biologically plausible learning rule for the maximization of information retained through time in dynamics of simple recurrent neural networks. Applying the derived learning rule in a numerical simulation, we reproduce the characteristics of spontaneous and sensory-evoked cortical activity: cell-assembly-like repeats of precise firing sequences, neuronal avalanches, spontaneous replays of learned firing sequences and orientation selectivity observed in the primary visual cortex. We further discuss the similarity between the derived learning rule and the spike timing-dependent plasticity of cortical neurons.
神经科学中的一个基本问题是理解大脑皮层中的神经元回路如何通过其特征性放电活动发挥其功能作用。在计算研究中,神经网络的信息最大化学习已经再现了自发和感觉诱发皮层活动的几个特征。然而,对于允许皮层回路最大化信息并产生自发和感觉诱发皮层活动特征的潜在学习机制,仍然很少有模型。在本文中,我们推导了一个生物学上合理的学习规则,用于在简单循环神经网络的动力学中随时间保留信息的最大化。在数值模拟中应用推导的学习规则,我们再现了自发和感觉诱发皮层活动的特征:精确放电序列的细胞集合样重复、神经元雪崩、学习到的放电序列的自发重放以及在初级视觉皮层中观察到的方向选择性。我们进一步讨论了推导的学习规则与皮层神经元的突触时间依赖性可塑性之间的相似性。