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Emergence of network structure due to spike-timing-dependent plasticity in recurrent neuronal networks III: Partially connected neurons driven by spontaneous activity

机译:复发性神经元网络中由于穗定时依赖的可塑性引起的网络结构的出现III:由自发活动驱动的部分连接的神经元

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In contrast to a feed-forward architecture, the weight dynamics induced by spike-timing-dependent plasticity (STDP) in a recurrent neuronal network is not yet well understood. In this article, we extend a previous study of the impact of additive STDP in a recurrent network that is driven by spontaneous activity (no external stimulating inputs) from a fully connected network to one that is only partially connected. The asymptotic state of the network is analyzed, and it is found that the equilibrium and stability conditions for the firing rates are similar for both full and partial connectivity: STDP causes the firing rates to converge toward the same value and remain quasi-homogeneous. However, when STDP induces strong weight competition, the connectivity affects the weight dynamics in that the distribution of the weights disperses more quickly for lower density than for higher density. The asymptotic weight distribution strongly depends upon that at the beginning of the learning epoch; consequently, homogeneous connectivity alone is not sufficient to obtain homogeneous neuronal activity. In the absence of external inputs, STDP can nevertheless generate structure in the network through autocorrelation effects, for example, by introducing asymmetry in network topology.
机译:与前馈体系结构相反,在递归神经元网络中由尖峰时序依赖的可塑性(STDP)诱导的体重动态尚未得到很好的理解。在本文中,我们将以前的研究(在自发活动(无外部刺激输入))从完全连接的网络的自发活动(没有外部刺激输入)驱动的循环网络中扩展到仅部分连接的网络。分析了网络的渐近状态,发现对于全部和部分连通性,点火速率的平衡和稳定性条件都相似:STDP导致点火速率朝着相同的值收敛并保持准均匀。但是,当STDP引起强烈的重量竞争时,连接性会影响重量动态,因为对于较低的密度,重量分布比对于较高的密度,分散更快。渐近权重分布在很大程度上取决于学习时期开始时的分布。因此,仅同质连通性不足以获得同质神经元活动。在没有外部输入的情况下,STDP仍然可以通过自相关效应在网络中生成结构,例如,通过在网络拓扑中引入不对称性。

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