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On a phase diagram for random neural networks with embedded spike timing dependent plasticity

机译:在随机神经网络的相图上,嵌入了与尖峰时间相关的可塑性

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摘要

This paper presents an original mathematical framework based on graph theory which is a first attempt to investigate the dynamics of a model of neural networks with embedded spike timing dependent plasticity. The neurons correspond to integrate-and-fire units located at the vertices of a finite subset of 2D lattice. There are two types of vertices, corresponding to the inhibitory and the excitatory neurons. The edges are directed and labelled by the discrete values of the synaptic strength. We assume that there is an initial firing pattern corresponding to a subset of units that generate a spike. The number of activated externally vertices is a small fraction of the entire network. The model presented here describes how such pattern propagates throughout the network as a random walk on graph. Several results are compared with computational simulations and new data are presented for identifying critical parameters of the model.
机译:本文提出了一个基于图论的原始数学框架,这是首次尝试研究具有嵌入式尖峰时序相关可塑性的神经网络模型的动力学。神经元对应于位于二维晶格的有限子集的顶点处的积分并发射单元。顶点有两种类型,分别对应于抑制性神经元和兴奋性神经元。边缘通过突触强度的离散值定向和标记。我们假设存在一个初始发射模式,该模式与产生尖峰的单位子集相对应。激活的外部顶点的数量仅占整个网络的一小部分。这里介绍的模型描述了这种模式如何作为随机游动图在整个网络中传播。几种结果与计算仿真进行了比较,并提供了新的数据来识别模型的关键参数。

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