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首页> 外文期刊>Biological Cybernetics >Spike-timing-dependent plasticity for neurons with recurrent connections
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Spike-timing-dependent plasticity for neurons with recurrent connections

机译:周期性连接的神经元的穗定时依赖性可塑性

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摘要

The dynamics of the learning equation, which describes the evolution of the synaptic weights, is derived in the situation where the network contains recurrent connections. The derivation is carried out for the Poisson neuron model. The spiking-rates of the recurrently connected neurons and their cross-correlations are determined self- consistently as a function of the external synaptic inputs. The solution of the learning equation is illustrated by the analysis of the particular case in which there is no external synaptic input. The general learning equation and the fixed-point structure of its solutions is discussed.
机译:描述网络突触权重的学习方程的动力学是在网络包含循环连接的情况下得出的。对泊松神经元模型进行推导。反复连接神经元的尖峰速率及其互相关是根据外部突触输入自洽确定的。通过分析其中没有外部突触输入的特殊情况来说明学习方程的解。讨论了一般学习方程式及其解的不动点结构。

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  • 来源
    《Biological Cybernetics》 |2007年第5期|533-546|共14页
  • 作者单位

    The Bionic Ear Institute 384–388 Albert Street East Melbourne VIC 3002 Australia;

    The Bionic Ear Institute 384–388 Albert Street East Melbourne VIC 3002 Australia;

    Physik Department TU München 85747 Garching bei München Germany;

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  • 正文语种 eng
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