Threefold way to the dimension reduction of dynamics on networks: an application to synchronization
Vincent Thibeault, Guillaume St-Onge, Louis J. Dub\'e, Patrick, Desrosiers

TL;DR
This paper introduces DART, a versatile dimension reduction technique for complex network dynamics, capable of handling heterogeneities and modular structures, and demonstrates its effectiveness in predicting synchronization phenomena.
Contribution
DART generalizes existing methods by accommodating complex variables, heterogeneity, and modular networks, providing a threefold approach to dimension reduction in network dynamics.
Findings
Successfully predicts synchronization curves for various oscillator models.
Identifies bifurcations and chimera states influenced by community asymmetry.
Recovers analytical results on explosive synchronization using reduced models.
Abstract
Several complex systems can be modeled as large networks in which the state of the nodes continuously evolves through interactions among neighboring nodes, forming a high-dimensional nonlinear dynamical system. One of the main challenges of Network Science consists in predicting the impact of network topology and dynamics on the evolution of the states and, especially, on the emergence of collective phenomena, such as synchronization. We address this problem by proposing a Dynamics Approximate Reduction Technique (DART) that maps high-dimensional (complete) dynamics unto low-dimensional (reduced) dynamics while preserving the most salient features, both topological and dynamical, of the original system. DART generalizes recent approaches for dimension reduction by allowing the treatment of complex-valued dynamical variables, heterogeneities in the intrinsic properties of the nodes as…
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