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Stimulus-Driven Unsupervised Synaptic Pruning in Large Neural Networks

机译:大型神经网络中的刺激驱动的无监督突触修剪。

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We studied the emergence of cell assemblies out of locally connected random networks of integrate-and-fire units distributed on a 2D lattice stimulated with a spatiotemporal pattern in presence of independent random background noise. Networks were composed of 80% excitatory and 20% inhibitory units with initially balanced synaptic weights. Excitatory-excitatory synapses were modified according to a spike-timing-dependent synaptic plasticity (STDP) rule associated with synaptic pruning. We show that the application, in presence of background noise, of a recurrent pattern of stimulation let appear cell assemblies characterized by an internal pattern of converging projections and a feed-forward topology not observed with an equivalent random stimulation.
机译:我们研究了在独立随机背景噪声的存在下,由时空模式刺激的二维网格上分布的集成和发射单元的局部连接随机网络中单元组装的出现。网络由80%的兴奋性单位和20%的抑制单位组成,它们的突触重量最初达到平衡。兴奋性-兴奋性突触根据与突触修剪相关的穗时间依赖性突触可塑性(STDP)规则进行修改。我们显示,在背景噪声存在的情况下,刺激的循环模式的应用使出现的细胞组件的特征是收敛的投影的内部模式和等效的随机刺激所未观察到的前馈拓扑。

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