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Pulse Coupled Neural Network Modeling of Firings in Hippocampus CA3

机译:海马CA3放电的脉冲耦合神经网络建模

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摘要

The hippocampus has been the focus of many researches over the last decades. The aim of this study is to simulate firings in hippocampus CA3 area with pulse coupled neural network (PCNN). The model consists of 120 neurons, of which the ratio of excitatory to inhibitory neuron is 5 to 1.The weight parameter is set according to Gaussian distribution. Results show that for the three different inputs: sinusoidal input, rectangular pulse, and the sum of the above inputs, average population firings rate is less than 10%; the sparse connectivity among neurons can be adjusted by weight matrix. We may come to the conclusions that: (1) Under three different types of inputs, the mean activity level of PCNN is less than 10%, which satisfies the sparse coding of hippocampus CA3; (2) The connectivity of the neurons is adjusted by the synaptic weight matrix. It satisfies the sparse connectivity of hippocampus neuron; (3) PCNN outputs different time series according to the input, which may be further used in future coding studies.
机译:在过去的几十年中,海马一直是许多研究的重点。这项研究的目的是通过脉冲耦合神经网络(PCNN)模拟海马CA3区的射击。该模型由120个神经元组成,其中兴奋性神经元与抑制性神经元之比为5:1。权重参数根据高斯分布进行设置。结果表明,对于三种不同的输入:正弦输入,矩形脉冲以及上述输入的总和,平均人口射击率低于10%;神经元之间的稀疏连通性可以通过权重矩阵进行调整。我们可能得出以下结论:(1)在三种不同类型的输入下,PCNN的平均活动水平小于10%,这满足了海马CA3的稀疏编码; (2)神经元的连通性由突触权重矩阵调整。它满足了海马神经元的稀疏连通性。 (3)PCNN根据输入输出不同的时间序列,可以在以后的编码研究中进一步使用。

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