A Multilayered Self-Learning Spiking Neural Network and its Learning Algorithm Based on ‘Winner-Takes-More’ Rule in Hierarchical Clustering

Yevgeniy V. Bodyanskiy, A. Dolotov
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引用次数: 2

Abstract

A Multilayered Self-Learning Spiking Neural Network and its Learning Algorithm Based on ‘Winner-Takes-More’ Rule in Hierarchical Clustering This paper introduces architecture of multilayered selflearning spiking neural network for hierarchical data clustering. It consists of the layer of population coding and several layers of spiking neurons. Contrary to originally suggested multilayered spiking neural network, the proposed one does not require a separate learning algorithm for lateral connections. Irregular clusters detecting capability is achieved by improving the temporal Hebbian learning algorithm. It is generalized by replacing ‘Winner-Takes-All’ rule with ‘Winner-Takes-More’ one. It is shown that the layer of receptive neurons can be treated as a fuzzification layer where pool of receptive neurons is a linguistic variable, and receptive neuron within a pool is a linguistic term. The network architecture is designed in terms of control systems theory. Using the Laplace transform notion, spiking neuron synapse is presented as a second-order critically damped response unit. Spiking neuron soma is modeled on the basis of bang-bang control systems theory as a threshold detection system. Simulation experiment confirms that the proposed architecture is effective in detecting irregular clusters.
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基于分层聚类“赢者多得”规则的多层自学习尖峰神经网络及其学习算法
一种基于分层聚类“赢者多取”规则的多层自学习尖峰神经网络及其学习算法介绍了用于分层数据聚类的多层自学习尖峰神经网络的体系结构。它由种群编码层和几层尖峰神经元组成。与最初提出的多层尖峰神经网络相反,所提出的神经网络不需要单独的横向连接学习算法。通过改进时态Hebbian学习算法,实现了不规则聚类检测能力。它是通过将“赢者通吃”规则替换为“赢者通吃”规则来推广的。结果表明,接收神经元层可以看作是一个模糊化层,其中接收神经元池是一个语言变量,池内的接收神经元是一个语言项。根据控制系统理论设计了网络体系结构。利用拉普拉斯变换的概念,将脉冲神经元突触表示为二阶临界阻尼响应单元。在砰砰控制系统理论的基础上,将脉冲神经元体细胞作为阈值检测系统进行建模。仿真实验验证了该结构在检测不规则聚类方面的有效性。
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