English

Statistical Analysis of Tipping Pathways in Agent-Based Models

Physics and Society 2023-08-02 v1

Abstract

Agent-based models are a natural choice for modeling complex social systems. In such models simple stochastic interaction rules for a large population of individuals can lead to emergent dynamics on the macroscopic scale, for instance a sudden shift of majority opinion or behavior. Here, we are concerned with studying noise-induced tipping between relevant subsets of the agent state space representing characteristic configurations. Due to the large number of interacting individuals, agent-based models are high-dimensional, though usually a lower-dimensional structure of the emerging collective behaviour exists. We therefore apply Diffusion Maps, a non-linear dimension reduction technique, to reveal the intrinsic low-dimensional structure. We characterize the tipping behaviour by means of Transition Path Theory, which helps gaining a statistical understanding of the tipping paths such as their distribution, flux and rate. By systematically studying two agent-based models that exhibit a multitude of tipping pathways and cascading effects, we illustrate the practicability of our approach.

Keywords

Cite

@article{arxiv.2103.02883,
  title  = {Statistical Analysis of Tipping Pathways in Agent-Based Models},
  author = {Luzie Helfmann and Jobst Heitzig and Péter Koltai and Jürgen Kurths and Christof Schütte},
  journal= {arXiv preprint arXiv:2103.02883},
  year   = {2023}
}
R2 v1 2026-06-23T23:44:36.029Z