Data-driven Identification of Attractors Using Machine Learning
Dynamical Systems
2025-12-17 v2
Abstract
In this paper we explore challenges in developing a topological framework in which machine learning can be used to robustly characterize global dynamics. Specifically, we focus on learning a useful discretization of the phase space of a flow on compact, hyperrectangle in from a neural network trained on labeled orbit data. A characterization of the structure of the global dynamics is obtained from approximations of attracting neighborhoods provided by the phase space discretization. The perspective that motivates this work is based on Conley's topological approach to dynamics, which provides a means to evaluate the efficacy and efficiency of our approach.
Cite
@article{arxiv.2506.06492,
title = {Data-driven Identification of Attractors Using Machine Learning},
author = {Marcio Gameiro and Brittany Gelb and William Kalies and Miroslav Kramar and Konstantin Mischaikow and Paul Tatasciore},
journal= {arXiv preprint arXiv:2506.06492},
year = {2025}
}