Institute for Research in Electronics and Applied Physics, University of Maryland, College Park, Maryland 20742, USA.
Institute for Physical Science and Technology, University of Maryland, College Park, Maryland 20742, USA.
Phys Rev E. 2016 Dec;94(6-1):062309. doi: 10.1103/PhysRevE.94.062309. Epub 2016 Dec 19.
We study the firing dynamics of a discrete-state and discrete-time version of an integrate-and-fire neuronal network model with both excitatory and inhibitory neurons. When the integer-valued state of a neuron exceeds a threshold value, the neuron fires, sends out state-changing signals to its connected neurons, and returns to the resting state. In this model, a continuous phase transition from non-ceaseless firing to ceaseless firing is observed. At criticality, power-law distributions of avalanche size and duration with the previously derived exponents, -3/2 and -2, respectively, are observed. Using a mean-field approach, we show analytically how the critical point depends on model parameters. Our main result is that the combined presence of both inhibitory neurons and integrate-and-fire dynamics greatly enhances the robustness of critical power-law behavior (i.e., there is an increased range of parameters, including both sub- and supercritical values, for which several decades of power-law behavior occurs).
我们研究了具有兴奋和抑制性神经元的整合和点火神经元网络模型的离散状态和离散时间版本的点火动力学。当神经元的整数值超过阈值时,神经元会发射,向其连接的神经元发送状态变化信号,并返回到静止状态。在这个模型中,观察到从不停点火到不停点火的连续相变。在临界点,观察到以前推导的指数分别为-3/2 和-2 的爆发大小和持续时间的幂律分布。使用平均场方法,我们从分析上展示了临界点如何取决于模型参数。我们的主要结果是,同时存在抑制性神经元和整合和点火动力学大大增强了临界幂律行为的稳健性(即,存在参数的增加范围,包括亚临界值和超临界值,在这些范围内会出现几十年来的幂律行为)。