Kravchuk K G, Vidybida A K
Bogolyubov Institute for Theoretical Physics, Metrologichna str. 14-B, 03680 Kyiv, Ukraine.
Biosystems. 2013 Jun;112(3):233-48. doi: 10.1016/j.biosystems.2013.02.002. Epub 2013 Feb 28.
The instantaneous state of a neural network consists of both the degree of excitation of each neuron the network is composed of and positions of impulses in communication lines between the neurons. In neurophysiological experiments, the neuronal firing moments are registered, but not the state of communication lines. But future spiking moments depend essentially on the past positions of impulses in the lines. This suggests, that the sequence of intervals between firing moments (inter-spike intervals, ISIs) in the network could be non-Markovian. In this paper, we address this question for a simplest possible neural "net", namely, a single inhibitory neuron with delayed feedback. The neuron receives excitatory input from the driving Poisson stream and inhibitory impulses from its own output through the feedback line. We obtain analytic expressions for conditional probability density P(tn+1|tn, …, t1, t0), which gives the probability to get an output ISI of duration tn+1 provided the previous (n+1) output ISIs had durations tn, …, t1, t0. It is proven exactly, that P(tn+1|tn, …, t1, t0) does not reduce to P(tn+1|tn, …, t1) for any n≥0. This means that the output ISIs stream cannot be represented as a Markov chain of any finite order.
神经网络的瞬时状态既包括其所含每个神经元的兴奋程度,也包括神经元之间通信线路中脉冲的位置。在神经生理学实验中,记录的是神经元的放电时刻,而非通信线路的状态。但未来的放电时刻在本质上取决于线路中脉冲过去的位置。这表明,网络中放电时刻之间的间隔序列(峰峰间隔,ISI)可能是非马尔可夫的。在本文中,我们针对一个尽可能简单的神经“网络”,即一个具有延迟反馈的单个抑制性神经元,来探讨这个问题。该神经元从驱动泊松流接收兴奋性输入,并通过反馈线路从其自身输出接收抑制性脉冲。我们得到了条件概率密度P(tn + 1|tn, …, t1, t0)的解析表达式,它给出了在前(n + 1)个输出ISI的持续时间分别为tn, …, t1, t0的情况下,获得持续时间为tn + 1的输出ISI的概率。确切地证明了,对于任何n≥0,P(tn + 1|tn, …, t1, t0)都不会简化为P(tn + 1|tn, …, t1)。这意味着输出ISI流不能表示为任何有限阶的马尔可夫链。