Sensitive Dependence of Optimal Network Dynamics on Network Structure
Takashi Nishikawa, Jie Sun, Adilson E. Motter

TL;DR
This paper investigates how optimizing network dynamics for stability can cause sensitive dependence on network structure, with implications for designing robust complex systems and understanding biological networks.
Contribution
It reveals that optimal network structures exhibit sensitive dependence on structural perturbations, identifying mechanisms like discontinuous transitions and eigenvector degeneracy.
Findings
Optimal networks show sensitivity to link removals and weight changes.
Discontinuous transitions occur in undirected optimal networks.
Eigenvector degeneracy is prevalent in directed optimal networks.
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…
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