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Moment neuronal networks: stochastic computation in neuronal systems

机译:瞬间神经元网络:神经元系统中的随机计算

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摘要

Spike trains recorded in cortical neurons in vivo can be approximated by renewal processes, but are generally not Poisson. Besides, the spiking activity of neighboring neurons display small yet not negligible correlations. The Artificial Neuronal Network theory has traditionally neglected such observations, assuming that neurons could simply be described by their mean firing rate. Here we present a theoretical framework in which the dynamics of a system of neurons is specified in terms of higher-order moments of their spiking activity beyond the mean firing rate.
机译:体内皮层神经元中记录的峰值序列可以通过更新过程来近似,但通常不是泊松。此外,邻近神经元的突波活动显示出小的但不可忽略的相关性。人工神经元网络理论传统上忽略了这种观察,假设神经元可以简单地用它们的平均发动率来描述。在这里,我们介绍了一个理论框架,其中神经元系统的动力学是根据其尖峰活动的平均阶跃超过平均发射速率来指定的。

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