Global and Local Reduced Models for Interacting, Heterogeneous Agents
Thomas N. Thiem (1), Felix P. Kemeth (2), Tom Bertalan (3), Carlo R., Laing (4), Ioannis G. Kevrekidis (5) ((1) Department of Chemical and, Biological Engineering, Princeton University, USA, (2) Department of Chemical, and Biomolecular Engineering, Whiting School of Engineering

TL;DR
This paper introduces a data-driven method to derive simplified, low-dimensional models for complex systems of heterogeneous agents, enabling efficient simulation and analysis by capturing collective dynamics through global or local coarse variables.
Contribution
It presents a novel coarse-graining approach that learns reduced models directly from data, applicable to both global and local interaction frameworks, overcoming analytical challenges.
Findings
Reduced models accurately reproduce agent dynamics
Local and global models perform comparably
Method applicable to complex heterogeneous systems
Abstract
Large collections of coupled, heterogeneous agents can manifest complex dynamical behavior presenting difficulties for simulation and analysis. However, if the collective dynamics lie on a low-dimensional manifold then the original agent-based model may be approximated with a simplified surrogate model on and near the low-dimensional space where the dynamics live. This is typically accomplished by deriving coarse variables that summarize the collective dynamics, these may take the form of either a collection of scalars or continuous fields (e.g. densities), which are then used as part of a reduced model. Analytically identifying such simplified models is challenging and has traditionally been accomplished through the use of mean-field reductions or an Ott-Antonsen ansatz, but is often impossible. Here we present a data-driven coarse-graining methodology for discovering such reduced…
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