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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >A new supervised learning algorithm for multiple spiking neural networks with application in epilepsy and seizure detection.
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A new supervised learning algorithm for multiple spiking neural networks with application in epilepsy and seizure detection.

机译:一种新的多峰神经网络监督学习算法,在癫痫和癫痫发作检测中的应用。

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摘要

A new Multi-Spiking Neural Network (MuSpiNN) model is presented in which information from one neuron is transmitted to the next in the form of multiple spikes via multiple synapses. A new supervised learning algorithm, dubbed Multi-SpikeProp, is developed for training MuSpiNN. The model and learning algorithm employ the heuristic rules and optimum parameter values presented by the authors in a recent paper that improved the efficiency of the original single-spiking Spiking Neural Network (SNN) model by two orders of magnitude. The classification accuracies of MuSpiNN and Multi-SpikeProp are evaluated using three increasingly more complicated problems: the XOR problem, the Fisher iris classification problem, and the epilepsy and seizure detection (EEG classification) problem. It is observed that MuSpiNN learns the XOR problem in twice the number of epochs compared with the single-spiking SNN model but requires only one-fourth the number of synapses. For the iris and EEG classification problems, a modular architecture is employed to reduce each 3-class classification problem to three 2-class classification problems and improve the classification accuracy. For the complicated EEG classification problem a classification accuracy in the range of 90.7%-94.8% was achieved, which is significantly higher than the 82% classification accuracy obtained using the single-spiking SNN with SpikeProp.
机译:提出了一种新的多尖峰神经网络(MuSpiNN)模型,其中,来自一个神经元的信息通过多个突触以多个尖峰的形式传输到下一个神经元。开发了一种新的监督学习算法,称为Multi-SpikeProp,用于训练MuSpiNN。该模型和学习算法采用了作者在最近的论文中提出的启发式规则和最佳参数值,从而将原始的单尖峰尖刺神经网络(SNN)模型的效率提高了两个数量级。 MuSpiNN和Multi-SpikeProp的分类精度使用三个越来越复杂的问题进行评估:XOR问题,Fisher虹膜分类问题以及癫痫和癫痫发作检测(EEG分类)问题。观察到,与单尖峰SNN模型相比,MuSpiNN可以以两倍的纪元数学习XOR问题,但只需要突触数的四分之一。对于虹膜和脑电图分类问题,采用模块化体系结构将每个3类分类问题减少为3个2类分类问题,并提高了分类精度。对于复杂的EEG分类问题,实现了90.7%-94.8%的分类精度,这明显高于使用带有SpikeProp的单发SNN获得的82%分类精度。

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