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Analysis of the Effects of Decay Coefficient and Time Resolution in SNN Backpropagation

机译:SNN反向传播中衰变系数和时间分辨率的影响分析

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High-performance neural networks operating at low power use spiking neural network (SNN) that are biologically closer than traditional ANN. SNN, unlike ANN, receives a series of binary-coded spike trains as input and updates the membrane potential of the neuron and generates spikes over a period of time specified by the number of spike trains. The function that generates the spike corresponding to the activation function of the ANN is not differentiable, which makes it difficult to apply the backpropagation (BP) algorithm used in the ANN. In order to overcome this problem, studies using numerical approximation of derivatives have been carried out in various ways. However, research on the decay coefficient and the number of spike trains, which are characteristic of SNN neuron, are insufficient. In this paper, we analyze the distribution of spikes and discuss how the decay coefficient characteristics of neurons and the number of spike trains affect network performance.
机译:在低功率下运行的高性能神经网络使用了尖峰神经网络(SNN),该网络在生物学上比传统的ANN更近。与ANN不同,SNN接收一系列二进制编码的尖峰序列作为输入,并更新神经元的膜电位,并在由尖峰序列数指定的一段时间内生成尖峰。生成与ANN的激活函数相对应的尖峰的函数是不可微的,这使得难以应用ANN中使用的反向传播(BP)算法。为了克服该问题,已经以各种方式进行了使用导数的数值逼近的研究。但是,关于SNN神经元的特征的衰减系数和峰值序列的数量的研究不足。在本文中,我们分析了尖峰的分布,并讨论了神经元的衰减系数特性和尖峰列的数量如何影响网络性能。

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