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Novel Spiking Neuron-Astrocyte Networks based on nonlinear transistor-like models of tripartite synapses

机译:基于非线性晶体管样三方突触模型的新型尖刺神经元-星形胶质细胞网络。

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In this paper a novel and efficient computational implementation of a Spiking Neuron-Astrocyte Network (SNAN) is reported. Neurons are modeled according to the Izhikevich formulation and the neuron-astrocyte interactions are intended as tripartite synapsis and modeled with the previously proposed nonlinear transistor-like model. Concerning the learning rules, the original spike-timing dependent plasticity is used for the neural part of the SNAN whereas an ad-hoc rule is proposed for the astrocyte part. SNAN performances are compared with a standard spiking neural network (SNN) and evaluated using the polychronization concept, i.e., number of co-existing groups that spontaneously generate patterns of polychronous activity. The astrocyte-neuron ratio is the biologically inspired value of 1.5. The proposed SNAN shows higher number of polychronous groups than SNN, remarkably achieved for the whole duration of simulation (24 hours).
机译:在本文中,报告了尖峰神经元-星形胶质细胞网络(SNAN)的新型高效计算实现。根据Izhikevich公式对神经元进行建模,并且神经元与星形胶质细胞的相互作用旨在作为三重突触,并使用先前提出的非线性晶体管样模型进行建模。关于学习规则,原始尖峰时序相关的可塑性用于SNAN的神经部分,而提议的特殊规则用于星形胶质细胞部分。将SNAN的性能与标准尖峰神经网络(SNN)进行比较,并使用多时同步概念进行评估,即自发生成多时同步活动模式的共存组的数量。星形胶质细胞-神经元比率是1.5的生物学启发值。拟议的SNAN显示比SNN更高的多同步组数,这在整个模拟持续时间内(24小时)都非常明显。

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