Mean field limits of co-evolutionary signed heterogeneous networks
Marios Antonios Gkogkas, Christian Kuehn, Chuang Xu

TL;DR
This paper establishes a rigorous mean field limit for co-evolutionary Kuramoto oscillator networks on heterogeneous signed graphs, describing their convergence to a generalized Vlasov equation.
Contribution
It provides the first rigorous derivation of mean field limits for co-evolutionary networks, incorporating feedback-driven dynamic connections.
Findings
Mean field limit exists under mild conditions.
Co-evolutionary networks converge to a generalized Vlasov equation.
Addresses a gap in the literature on dynamic, feedback-influenced networks.
Abstract
Many science phenomena are modelled as interacting particle systems (IPS) coupled on static networks. In reality, network connections are far more dynamic. Connections among individuals receive feedback from nearby individuals and make changes to better adapt to the world. Hence, it is reasonable to model myriad real-world phenomena as co-evolutionary (or adaptive) networks. These networks are used in different areas including telecommunication, neuroscience, computer science, biochemistry, social science, as well as physics, where Kuramoto-type networks have been widely used to model interaction among a set of oscillators. In this paper, we propose a rigorous formulation for limits of a sequence of co-evolutionary Kuramoto oscillators coupled on heterogeneous co-evolutionary networks, which receive both positive and negative feedback from the dynamics of the oscillators on the…
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Taxonomy
TopicsNonlinear Dynamics and Pattern Formation · Gene Regulatory Network Analysis · Advanced Thermodynamics and Statistical Mechanics
