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Linked Gauss-Diffusion processes for modeling a finite-size neuronal network

机译:用于建模有限尺寸神经元网络的链接高斯扩散过程

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AbstractA Leaky Integrate-and-Fire (LIF) model with stochastic current-based linkages is considered to describe the firing activity of neurons interacting in a (2×2)-size feed-forward network. In the subthreshold regime and under the assumption that no more than one spike is exchanged between coupled neurons, the stochastic evolution of the neuronal membrane voltage is subject to random jumps due to interactions in the network. Linked Gauss-Diffusion processes are proposed to describe this dynamics and to provide estimates of the firing probability density of each neuron. To this end, an iterated integral equation-based approach is applied to evaluate numerically the first passage time density of such processes through the firing threshold. Asymptotic approximations of the firing densities of surrounding neurons are used to obtain closed-form expressions for the mean of the involved processes and to simplify the numerical procedure. An extension of the model to an (N×N)-size network is also given. Histograms of firing times obtained by simulations of the LIF dynamics and numerical firings estimates are compared.]]>
机译:<![cdata [ 抽象 泄漏的集成和火(LID)模型与随机电流的连接被认为描述了神经元在A中相互作用的射击活性( 2×2) - 提出前馈网络。在亚阈值方案中并且在偶联神经元之间不交换不超过一个尖峰的假设,神经元膜电压的随机演化由于网络中的相互作用而受到随机跳跃。提出了链接的高斯扩散过程来描述这种动态,并提供每个神经元的烧制概率密度的估计。为此,应用基于迭代的积分等式的方法来通过射击阈值来数字地评估这些过程的第一通道时间密度。周围神经元的烧焦密度的渐近近似用于获得涉及过程的平均值的闭合形式表达式,并简化数值过程。还给出了模型的扩展( n × n ) - 大小网络。比较了通过模拟LIF动态和数值燃烧估算获得的射击时间的直方图。 ]]>

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