School of Physics, University of Sydney, New South Wales 2006, Australia.
Phys Rev Lett. 2022 Jul 22;129(4):048103. doi: 10.1103/PhysRevLett.129.048103.
We investigate the emergence of complex dynamics in networks with heavy-tailed connectivity by developing a non-Hermitian random matrix theory. We uncover the existence of an extended critical regime of spatially multifractal fluctuations between the quiescent and active phases. This multifractal critical phase combines features of localization and delocalization and differs from the edge of chaos in classical networks by the appearance of universal hallmarks of Anderson criticality over an extended region in phase space. We show that the rich nonlinear response properties of the extended critical regime can account for a variety of neural dynamics such as the diversity of timescales, providing a computational advantage for persistent classification in a reservoir setting.
我们通过开发非厄米随机矩阵理论来研究具有长尾连接的网络中复杂动力学的出现。我们揭示了在静止相和活跃相之间存在扩展的空间多重分形波动的临界状态。这个多重分形临界状态结合了局域化和离域化的特征,与经典网络中的混沌边缘不同,它在相空间的扩展区域中出现了安德森临界性的普遍特征。我们表明,扩展临界状态的丰富非线性响应特性可以解释多种神经动力学,例如时间尺度的多样性,为储层设置中的持续分类提供了计算优势。