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基于学习速率自适应的脉冲神经网络快速学习方(英文)
引用本文:方慧娟,罗继亮,王飞. 基于学习速率自适应的脉冲神经网络快速学习方(英文)[J]. 中国化学工程学报, 2012, 20(6): 1219-1224. DOI: 10.1016/S1004-9541(12)60611-9
作者姓名:方慧娟  罗继亮  王飞
作者单位:College of Information Science and Engineering, Huaqiao University, Xiamen 361021, China
基金项目:Supported by the National Natural Science Foundation of China (60904018, 61203040);the Natural Science Foundation of Fujian Province of China (2009J05147, 2011J01352);the Foundation for Distinguished Young Scholars of Higher Education of Fujian Province of China (JA10004);the Science Research Foundation of Huaqiao University (09BS617)
摘    要:For accelerating the supervised learning by the SpikeProp algorithm with the temporal coding paradigm in spiking neural networks (SNNs), three learning rate adaptation methods (heuristic rule, delta-delta rule, and delta-bar-delta rule), which are used to speed up training in artificial neural networks, are used to develop the training algorithms for feedforward SNN. The performance of these algorithms is investigated by four experiments: classical XOR (exclusive or) problem, Iris dataset, fault diagnosis in the Tennessee Eastman process, and Poisson trains of discrete spikes. The results demonstrate that all the three learning rate adaptation methods are able to speed up convergence of SNN compared with the original SpikeProp algorithm. Furthermore, if the adaptive learning rate is used in combination with the momentum term, the two modifications will balance each other in a beneficial way to accomplish rapid and steady convergence. In the three learning rate adaptation methods, delta-bar-delta rule performs the best. The delta-bar-delta method with momentum has the fastest convergence rate, the greatest stability of training process, and the maximum accuracy of network learning. The proposed algorithms in this paper are simple and efficient, and consequently valuable for practical applications of SNN.

关 键 词:spiking neural networks  learning algorithm  learning rate adaptation  Tennessee Eastman process  
收稿时间:2012-06-10

Fast Learning in Spiking Neural Networks by Learning Rate Adaptation*
FANG Huijuan, LUO Jiliang and WANG Fei. Fast Learning in Spiking Neural Networks by Learning Rate Adaptation*[J]. Chinese Journal of Chemical Engineering, 2012, 20(6): 1219-1224. DOI: 10.1016/S1004-9541(12)60611-9
Authors:FANG Huijuan   LUO Jiliang  WANG Fei
Affiliation:College of Information Science and Engineering, Huaqiao University, Xiamen 361021, China
Abstract:For accelerating the supervised learning by the SpikeProp algorithm with the temporal coding paradigm in spiking neural networks (SNNs),three learning rate adaptation methods (heuristic rule,delta-delta rule,and delta-bar-delta rule),which are used to speed up training in artificial neural networks,are used to develop the training algorithms for feedforward SNN.The performance of these algorithms is investigated by four experiments: classical XOR (exclusive or) problem,Iris dataset,fault diagnosis in the Tennessee Eastman process,and Poisson trains of discrete spikes.The results demonstrate that all the three learning rate adaptation methods are able to speed up convergence of SNN compared with the original SpikeProp algorithm.Furthermore,if the adaptive learning rate is used in combination with the momentum term,the two modifications will balance each other in a beneficial way to accomplish rapid and steady convergence.In the three learning rate adaptation methods,delta-bar-delta rule performs the best.The delta-bar-delta method with momentum has the fastest convergence rate,the greatest stability of training process,and the maximum accuracy of network learning.The proposed algorithms in this paper are simple and efficient,and consequently valuable for practical applications of SNN.
Keywords:
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