西北师范大学计算机科学与工程学院,甘肃,兰州,730070
纸质出版:2015
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蔺想红, 王向文, 张宁, 等. 脉冲神经网络的监督学习算法研究综述[J]. 电子学报, 2015,43(3):577-586.
LIN Xiang-hong, WANG Xiang-wen, ZHANG Ning, et al. Supervised Learning Algorithms for Spiking Neural Networks:A Review[J]. Acta Electronica Sinica, 2015, 43(3): 577-586.
蔺想红, 王向文, 张宁, 等. 脉冲神经网络的监督学习算法研究综述[J]. 电子学报, 2015,43(3):577-586. DOI: 10.3969/j.issn.0372-2112.2015.03.024.
LIN Xiang-hong, WANG Xiang-wen, ZHANG Ning, et al. Supervised Learning Algorithms for Spiking Neural Networks:A Review[J]. Acta Electronica Sinica, 2015, 43(3): 577-586. DOI: 10.3969/j.issn.0372-2112.2015.03.024.
脉冲神经网络是进行复杂时空信息处理的有效工具
但由于其内在的不连续和非线性机制
构建高效的脉冲神经网络监督学习算法非常困难
同时也是该研究领域的重要问题.本文介绍了脉冲神经网络监督学习算法的基本框架
以及性能评价原则
包括脉冲序列学习能力、离线与在线处理性能、学习规则的局部特性和对神经网络结构的适用性.此外
对脉冲神经网络监督学习算法的梯度下降学习规则、突触可塑性学习规则和脉冲序列卷积学习规则进行了详细的讨论
通过对比分析指出现有算法存在的优缺点
并展望了该领域未来的研究方向.
Spiking neural networks are shown to be suitable tools for the processing of spatio-temporal information.However
due to their intricately discontinuous and implicit nonlinear mechanisms
the formulation of efficient supervised learning algorithms for spiking neural networks is difficult
which is an important problem in the research area.In this paper
we introduce the general framework of supervised learning algorithms for spiking neural networks
and analyze their performance evaluations including spike trains learning ability
offline and online processing ability
the locality of learning mechanism and the applicability to network structure.Furthermore
we survey the advance of the research on supervised learning algorithms
which can be divided into three categories according to their differences:gradient descent rule
synaptic plasticity rule
and spike trains convolution rule.Finally
we discuss the advantages and disadvantages of these algorithms
and prospect the problems in current research and some future research directions in this area.
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