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Laws of Large Numbers and Langevin Approximations for Stochastic Neural Field Equations

机译:随机神经场方程的大数定律和Langevin逼近

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In this study, we consider limit theorems for microscopic stochastic models of neural fields. We show that the Wilson–Cowan equation can be obtained as the limit in uniform convergence on compacts in probability for a sequence of microscopic models when the number of neuron populations distributed in space and the number of neurons per population tend to infinity. This result also allows to obtain limits for qualitatively different stochastic convergence concepts, e.g., convergence in the mean. Further, we present a central limit theorem for the martingale part of the microscopic models which, suitably re-scaled, converges to a centred Gaussian process with independent increments. These two results provide the basis for presenting the neural field Langevin equation, a stochastic differential equation taking values in a Hilbert space, which is the infinite-dimensional analogue of the chemical Langevin equation in the present setting. On a technical level, we apply recently developed law of large numbers and central limit theorems for piecewise deterministic processes taking values in Hilbert spaces to a master equation formulation of stochastic neuronal network models. These theorems are valid for processes taking values in Hilbert spaces, and by this are able to incorporate spatial structures of the underlying model.
机译:在这项研究中,我们考虑了神经场的微观随机模型的极限定理。我们表明,当一系列微观模型的概率分布在空间上的神经元数量和每个种群中的神经元数量趋于无穷大时,威尔逊-科万方程可以作为紧凑一致压缩收敛的极限。该结果还允许获得针对性质上不同的随机收敛概念(例如,均值收敛)的极限。此外,我们为微观模型的the部分提供了一个中心极限定理,该模型经过适当地重新定标,以独立的增量收敛到中心的高斯过程。这两个结果为介绍神经场Langevin方程提供了基础,该方程是在Hilbert空间中获取值的随机微分方程,它是当前环境中化学Langevin方程的无穷维模拟。在技​​术层面上,我们将最近开发的大数定律和中心极限定理用于采用Hilbert空间中的值的分段确定性过程,用于随机神经元网络模型的主方程式。这些定理对于在希尔伯特空间中取值的过程是有效的,从而可以合并基础模型的空间结构。

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