U.S. Naval Research Laboratory, Code 6792, Plasma Physics Division, Nonlinear Systems Dynamics Section, Washington, DC, 20375, United States.
Sci Rep. 2017 Sep 6;7(1):10663. doi: 10.1038/s41598-017-08828-8.
We propose an analytical technique to study large fluctuations and switching from internal noise in complex networks. Using order-disorder kinetics as a generic example, we construct and analyze the most probable, or optimal path of fluctuations from one ordered state to another in real and synthetic networks. The method allows us to compute the distribution of large fluctuations and the time scale associated with switching between ordered states for networks consistent with mean-field assumptions. In general, we quantify how network heterogeneity influences the scaling patterns and probabilities of fluctuations. For instance, we find that the probability of a large fluctuation near an order-disorder transition decreases exponentially with the participation ratio of a network's principle eigenvector - measuring how many nodes effectively contribute to an ordered state. Finally, the proposed theory is used to answer how and where a network should be targeted in order to optimize the time needed to observe a switch.
我们提出了一种分析技术,用于研究复杂网络中的大波动和由内部噪声引起的转换。我们使用有序无序动力学作为一个通用示例,构建并分析了从一种有序状态到另一种有序状态的最可能或最优波动路径,这在真实和合成网络中是一致的。该方法允许我们计算与平均场假设一致的网络中大波动的分布以及在有序状态之间切换的时间尺度。一般来说,我们量化了网络异质性如何影响波动的标度模式和概率。例如,我们发现,在有序无序转变附近的大波动的概率随网络主特征向量的参与比呈指数下降,这衡量了有多少节点有效地贡献于一种有序状态。最后,所提出的理论用于回答应该如何以及在何处针对网络以优化观察到切换所需的时间。