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首页> 外文期刊>Journal of Computational Neuroscience >A Markovian event-based framework for stochastic spiking neural networks
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A Markovian event-based framework for stochastic spiking neural networks

机译:基于马尔可夫事件的随机尖峰神经网络框架

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摘要

In spiking neural networks, the information is conveyed by the spike times, that depend on the intrinsic dynamics of each neuron, the input they receive and on the connections between neurons. In this article we study the Markovian nature of the sequence of spike times in stochastic neural networks, and in particular the ability to deduce from a spike train the next spike time, and therefore produce a description of the network activity only based on the spike times regardless of the membrane potential process. To study this question in a rigorous manner, we introduce and study an event-based description of networks of noisy integrate-and-fire neurons, i.e. that is based on the computation of the spike times. We show that the firing times of the neurons in the networks constitute a Markov chain, whose transition probability is related to the probability distribution of the interspike interval of the neurons in the network. In the cases where the Markovian model can be developed, the transition probability is explicitly derived in such classical cases of neural networks as the linear integrate-and-fire neuron models with excitatory and inhibitory interactions, for different types of synapses, possibly featuring noisy synaptic integration, transmission delays and absolute and relative refractory period. This covers most of the cases that have been investigated in the event-based description of spiking deterministic neural networks.
机译:在尖峰神经网络中,信息是通过尖峰时间传达的,尖峰时间取决于每个神经元的内在动力学,它们接收的输入以及神经元之间的连接。在本文中,我们研究了随机神经网络中尖峰时间序列的马尔可夫性质,特别是从尖峰序列推导下一个尖峰时间的能力,因此仅基于尖峰时间来描述网络活动无论膜电位过程如何。为了严格研究这个问题,我们引入并研究了基于事件的噪声积分和发射神经元网络的描述,即基于尖峰时间的计算。我们表明,神经元在网络中的放电时间构成了一个马尔可夫链,其转移概率与网络中神经元的穗间间隔的概率分布有关。在可以发展马尔可夫模型的情况下,对于不同类型的突触(可能具有嘈杂的突触),在经典的神经网络中,例如具有兴奋性和抑制性相互作用的线性积分-发射神经元模型,可以明确地得出转移概率。积分,传输延迟以及绝对和相对不应期。这涵盖了尖峰确定性神经网络的基于事件的描述中已研究的大多数情况。

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