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Implementation of Learning Mechanisms on a Cat-Scale Cerebellar Model and Its Simulation

机译:猫规模小脑模型的学习机制及其仿真实现

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We have built a large-scale spiking network model of the cerebellum with 1 billion neurons on a supercomputer previously. The model, however, did not incorporate synaptic plasticity such as long-term depression and potentiation at parallel fiber-Purkinje cell synapses. In this study, we implemented them on the model. To test the learning capability, as a benchmark, we carried out simulation of eye movement reflex called gain adaptation of optokinetic response (OKR). The present model successfully reproduced the increase of firing rate modulation of a Purkinje cell during simulated OKR training, resulting in the increase of OKR gain. The model completed a 6s simulation within 4.4 s, suggesting realtime simulation even with the learning mechanisms. These results suggest that the present cerebellar model can now perform reservoir computing, a supervised learning machine for spatiotemporal signals, with very large reservoir composed of 1 billion neurons.
机译:我们在先前建立了一个大型尖峰网络模型,在超级计算机上为10亿神经元进行了大型尖峰网络模型。然而,该模型未掺入突触尺寸,例如并行纤维 - 浦本群细胞突触处的长期抑郁和增强性。在这项研究中,我们在模型上实施了它们。为了测试学习能力,作为基准测试,我们进行了眼部运动反射的模拟,称为增益适应视神经响应(OKR)。本模型成功地复制了模拟OKR训练期间Purkinje细胞射击率调制的增加,导致OKR增益的增加。该模型在4.4秒内完成了6S模拟,表明即使使用学习机制也是实时模拟。这些结果表明,目前的大脑模型现在可以执行水库计算,这是一种用于时空信号的监督学习机,具有非常大的储层由10亿神经元组成。

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