Expert Paul, de Nigris Sarah, Takaguchi Taro, Lambiotte Renaud
Department of Mathematics, Imperial College London, London SW7 2AZ, United Kingdom.
EPSRC Centre for Mathematics of Precision Healthcare, Imperial College London, London SW7 2AZ, United Kingdom.
Phys Rev E. 2017 Jul;96(1-1):012312. doi: 10.1103/PhysRevE.96.012312. Epub 2017 Jul 11.
There is recent evidence that the XY spin model on complex networks can display three different macroscopic states in response to the topology of the network underpinning the interactions of the spins. In this work we present a way to characterize the macroscopic states of the XY spin model based on the spectral decomposition of time series using topological information about the underlying networks. We use three different classes of networks to generate time series of the spins for the three possible macroscopic states. We then use the temporal Graph Signal Transform technique to decompose the time series of the spins on the eigenbasis of the Laplacian. From this decomposition, we produce spatial power spectra, which summarize the activation of structural modes by the nonlinear dynamics, and thus coherent patterns of activity of the spins. These signatures of the macroscopic states are independent of the underlying network class and can thus be used as robust signatures for the macroscopic states. This work opens avenues to analyze and characterize dynamics on complex networks using temporal Graph Signal Analysis.
最近有证据表明,复杂网络上的XY自旋模型可根据支撑自旋相互作用的网络拓扑结构呈现三种不同的宏观状态。在这项工作中,我们提出了一种基于时间序列的谱分解来表征XY自旋模型宏观状态的方法,该方法利用了基础网络的拓扑信息。我们使用三类不同的网络来生成三种可能宏观状态下自旋的时间序列。然后,我们使用时间图信号变换技术在拉普拉斯特征基上分解自旋的时间序列。通过这种分解,我们生成了空间功率谱,它总结了非线性动力学对结构模式的激活,从而得到自旋的相干活动模式。这些宏观状态的特征与基础网络类别无关,因此可以用作宏观状态的稳健特征。这项工作为使用时间图信号分析来分析和表征复杂网络上的动力学开辟了道路。