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Closed-form solutions for the first-passage-time problem and neuronal modeling

机译:首次通行时间问题和神经元建模的封闭式解决方案

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The Gauss–Diffusion processes are here considered and some relations between their infinitesimal moments and mean and covariance functions are remarked. The corresponding linear stochastic differential equations are re-written specifying the coefficient functions and highlighting their meanings in theoretical and application contexts. We resort the Doob-transformation of a Gauss–Markov process as a transformed Wiener process and we represent some time-inhomogeneous processes as transformed Ornstein–Uhlenbeck process. The first passage time problem is considered in order to discuss some neuronal models based on Gauss–Diffusion processes. We recall some different approaches to solve the first passage time problem specifying when a closed-form result exists and numerical evaluations are required when the latter is not available. In the contest of neuronal modeling, relations between firing threshold, mean behavior of the neuronal membrane voltage and input currents are given for the existence of a closed-form result useful to describe the firing activity. Finally, we collect in an unified way some models and the corresponding Gauss–Diffusion processes already considered by us in some previous papers.
机译:这里考虑了高斯-扩散过程,并指出了它们的极小矩与均值和协方差函数之间的一些关系。重写了相应的线性随机微分方程,指定了系数函数并在理论和应用环境中突出了它们的含义。我们将高斯-马尔可夫过程的Doob变换作为维纳变换过程,并且将某些时间不均匀的过程表示为奥恩斯坦-乌伦贝克变换过程。为了讨论一些基于高斯扩散过程的神经元模型,需要考虑第一个通过时间问题。我们回想了一些不同的方法来解决第一个通过时间问题,这些问题指定了何时存在封闭形式的结果,而在后者不可用时需要进行数值评估。在神经元建模的竞赛中,给出了阈值,神经元膜电压的平均行为和输入电流之间的关系,以给出可用于描述激发活动的闭合形式结果。最后,我们以统一的方式收集了一些我们已经在之前的论文中考虑过的模型和相应的高斯扩散过程。

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