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Mean field and capacity in realistic networks of spiking neurons storing sparsely coded random memories

机译:尖峰神经元存储稀疏编码随机存储器的真实网络中的平均场和容量

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摘要

Mean-field (MF) theory is extended to realistic networks of spiking neurons storing in synaptic couplings of randomly chosen stimuli of a given low coding level. The underlying synaptic matrix is the result of a generic, slow, long-term synaptic plasticity of two-state synapses, upon repeated presentation of the fixed set of the stimuli to be stored. The neural populations subtending the MF description are classified by the number of stimuli to which their neurons are responsive (multiplicity). This involves 2p + 1 populations for a network storing p memories. The computational complexity of the MF description is then significantly reduced by observing that at low coding levels (f), only a few populations remain relevant: the population of mean multiplicity - pf and those of multiplicity of order rootpf around the mean.The theory is used to produce (predict) bifurcation diagrams (the onset of selective delay activity and the rates in its various stationary states) and to compute the storage capacity of the network ( the maximal number of single items used in training for each of which the network can sustain a persistent, selective activity state). This is done in various regions of the space of constitutive parameters for the neurons and for the learning process. The capacity is computed in MF versus potentiation amplitude, ratio of potentiation to depression probability and coding level f. The MF results compare well with recordings of delay activity rate distributions in simulations of the underlying microscopic network of 10,000 neurons.
机译:平均场(MF)理论扩展到了尖峰神经元的现实网络,这些网络存储在给定的低编码水平的随机选择的刺激的突触耦合中。潜在的突触矩阵是两种状态突触的通用,缓慢,长期突触可塑性的结果,是反复呈现要存储的固定刺激集的结果。遵循MF描述的神经群体通过其神经元对其做出响应的刺激数(多样性)进行分类。对于存储p个存储器的网络,这涉及2p +1个种群。观察到在低编码水平(f)下,仍然只有少数总体是有效的,因此MF描述的计算复杂度大大降低:均值多重性pf的总体和均方根附近的阶次pf的总体。用于生成(预测)分叉图(选择性延迟活动的开始以及在其各种固定状态下的速率)并计算网络的存储容量(用于网络训练的单个项目的最大数目,网络可以维持持续的选择性活动状态)。这是在神经元和学习过程的结构参数空间的各个区域中完成的。容量以MF与增强幅度,增强与抑制概率的比率以及编码级别f的形式计算。 MF结果与10,000个神经元的潜在微观网络的模拟中的延迟活动率分布的记录比较好。

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