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Markov analysis of stochastic resonance in a periodically driven integrate-and-fire neuron

机译:周期驱动的积分与发射神经元中随机共振的马尔可夫分析

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We model the dynamics of the leaky integrate-and-fire neuron under periodic stimulation as a Markovprocess with respect to the stimulus phase. This avoids the unrealistic assumption of a stimulus reset after each spike made in earlier papers and thus solves the long-standing reset problem. The neuron exhibits stochastic resonance, both with respect to input noise intensity and stimulus frequency. The latter resonance arises by matching the stimulus frequency to the refractory. time of the neuron. The Markov approach can be generalized to other periodically driven stochastic processes containing a reset mechanism. [References: 53]
机译:我们对周期性刺激下的泄漏积分和发射神经元的动力学建模为相对于刺激阶段的马尔可夫过程。这避免了在较早的论文中每次出现尖峰之后不现实的刺激重置假设,从而解决了长期存在的重置问题。就输入噪声强度和刺激频率而言,神经元均表现出随机共振。后一种共振是通过使刺激频率与耐火材料匹配而产生的。神经元的时间。马尔可夫方法可以推广到包含重置机制的其他周期性驱动的随机过程。 [参考:53]

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