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Stochastic resonance of a periodically driven neuron under non-Gaussian noise

机译:非高斯噪声下周期性驱动神经元的随机共振

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We investigate the first-passage-time statistics of the integrate-fire neuron model driven by a sub-threshold harmonic signal superposed with a non-Gaussian noise. Here, we considered the noise as the result of a random multiplicative process displaced from the origin by an additive term. Such a mechanism generates a power-law distributed noise whose characteristic decay exponent can be finely tuned. We performed numerical simulations to analyze the influence of the noise non-Gaussian character on the stochastic resonance condition. We found that when the noise deviates from Gaussian statistics, the resonance condition occurs at weaker noise intensities, achieving a minimum at a finite value of the distribution function decay exponent. We discuss the possible relevance of this feature to the efficiency of the firing dynamics of biological neurons, as the present result indicates that neurons would require a lower noise level to detect a sub-threshold signal when its statistics departs from Gaussian. (c) 2007 Elsevier B.V. All rights reserved.
机译:我们研究由亚阈值谐波信号叠加非高斯噪声驱动的集成火神经元模型的首次通过时间统计信息。在这里,我们将噪声视为由原点偏移加法项的随机乘法过程的结果。这种机制会产生幂律分布的噪声,其特征衰减指数可以进行微调。我们进行了数值模拟,以分析噪声非高斯特性对随机共振条件的影响。我们发现,当噪声偏离高斯统计量时,共振条件发生在较弱的噪声强度处,在分布函数衰减指数的有限值处达到最小值。我们讨论了此功能与生物神经元激发动力学效率的可能相关性,因为当前结果表明,当神经元的统计数据偏离高斯时,神经元将需要较低的噪声水平来检测亚阈值信号。 (c)2007 Elsevier B.V.保留所有权利。

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