用替代神经元分析联想混沌神经动力学

M. Adachi
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引用次数: 0

摘要

本文采用非线性时间序列分析方法对联想混沌神经动力学进行了分析。分析的目的是找出组成神经元的确定性混沌的哪个统计量对混沌联想神经动力学是重要的。将原始时间序列的特征与人工时间序列的特征进行比较,并保留原始时间序列的一些统计量。混沌神经网络中的一些组成神经元被它们的替代数据所取代。比较了原始网络的检索频率和保留原始数据动态范围的三种替代方法的检索频率。结果表明,除了神经元输出的自相关外,神经网络中神经元之间的交叉谱对维持联想混沌神经动力学也有一定的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An analysis of associative chaotic neurodynamics by using surrogate neurons
In the present paper, associative chaotic neurodynamics is analyzed by using a method for nonlinear time series analysis. The aim of the analysis is to finding out which statistic of the deterministic chaos of the constituent neurons is important for the chaotic associative neurodynamics. A method comparing features of the original time series with that of artificially made time series preserving some statistics of the original one is applied for the analysis as follows. Some of the constituent neurons in the chaotic neural network are replaced by their surrogate data. The retrieval frequencies of the original network and the network with three surrogate methods, that preserve the dynamic range of the original data, are compared. The results show that not only the auto-correlation in neuronal output of a neuron but also the cross-spectra among the neurons in the network play certain role for maintaining the associative chaotic neurodynamics.
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