首页> 外文会议>International Symposium on Neural Networks pt.1; 20040819-20040821; Dalian; CN >Surrogating Neurons in an Associative Chaotic Neural Network
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Surrogating Neurons in an Associative Chaotic Neural Network

机译:关联混沌神经网络中的代孕神经元

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A method of surrogate data, which is originally proposed for nonlinear time series analysis, is applied to an associative chaotic neural network in order to see which statistic of the deterministic chaos of the constituent neurons in the network for the dynamical association is important. The original associative network consists of 16 chaotic model neurons whose individuals may exhibit deterministic chaos by themselves. The associative network, whose synaptic weights are determined by a conventional auto-associative matrix of the three orthogonal patterns, shows chaotic retrievals of the stored patterns. The method of surrogation is applied to replace several neuronal sites by the surrogate data to see which statistic of the deterministic chaos of the constituent neurons is important to show the chaotic retrieval. The result shows that the auto-correlation of the time series of the output of the constituent neurons is important for maintaining the chaotic retrieval.
机译:最初为非线性时间序列分析提出的一种替代数据方法被应用于关联混沌神经网络,以了解对于动态关联而言,网络中组成神经元确定性混沌的哪个统计数据很重要。原始的关联网络由16个混沌模型神经元组成,这些个体的个人可能会表现出确定性的混沌。关联网络的突触权重由三个正交模式的常规自动关联矩阵确定,该网络显示了所存储模式的混沌检索。应用替代方法通过替代数据替换几个神经元部位,以查看组成神经元确定性混沌的哪个统计数据对于显示混沌检索很重要。结果表明,组成神经元输出的时间序列的自相关对于维持混沌检索很重要。

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