Sensitive Dependence of Optimal Network Dynamics on Network Structure

T. Nishikawa, Jie Sun, A. Motter
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引用次数: 28

Abstract

The relation between network structure and dynamics is determinant for the behavior of complex systems in numerous domains. An important long-standing problem concerns the properties of the networks that optimize the dynamics with respect to a given performance measure. Here we show that such optimization can lead to sensitive dependence of the dynamics on the structure of the network. Specifically, using diffusively coupled systems as examples, we demonstrate that the stability of a dynamical state can exhibit sensitivity to unweighted structural perturbations (i.e., link removals and node additions) for undirected optimal networks and to weighted perturbations (i.e., small changes in link weights) for directed optimal networks. As mechanisms underlying this sensitivity, we identify discontinuous transitions occurring in the complement of undirected optimal networks and the prevalence of eigenvector degeneracy in directed optimal networks. These findings establish a unified characterization of networks optimized for dynamical stability, which we illustrate using Turing instability in activator-inhibitor systems, synchronization in power-grid networks, network diffusion, and several other network processes. Our results suggest that the network structure of a complex system operating near an optimum can potentially be fine-tuned for a significantly enhanced stability compared to what one might expect from simple extrapolation. On the other hand, they also suggest constraints on how close to the optimum the system can be in practice. Finally, the results have potential implications for biophysical networks, which have evolved under the competing pressures of optimizing fitness while remaining robust against perturbations.
最优网络动力学对网络结构的敏感依赖
网络结构与动力学之间的关系决定了复杂系统在许多领域的行为。一个重要的长期存在的问题是关于网络的特性,优化动态相对于给定的性能指标。在这里,我们表明这种优化可以导致动态对网络结构的敏感依赖。具体来说,以扩散耦合系统为例,我们证明了动态状态的稳定性对无向最优网络的非加权结构扰动(即链路移除和节点添加)和有向最优网络的加权扰动(即链路权重的微小变化)具有敏感性。作为这种敏感性的机制,我们确定了发生在无向最优网络补中的不连续转换和有向最优网络中特征向量退化的普遍性。这些发现建立了针对动态稳定性优化的网络的统一表征,我们使用激活剂-抑制剂系统中的图灵不稳定性、电网网络中的同步、网络扩散和其他几个网络过程来说明这一点。我们的结果表明,与简单的外推所期望的相比,在最优附近运行的复杂系统的网络结构可以潜在地进行微调,以显着增强稳定性。另一方面,他们也提出了在实践中如何接近最优系统的约束。最后,这些结果对生物物理网络有潜在的影响,生物物理网络在优化适应度的竞争压力下进化,同时保持对扰动的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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