English

MAGI-X: Manifold-Constrained Gaussian Process Inference for Unknown System Dynamics

Machine Learning 2021-10-22 v3 Machine Learning Computation Methodology

Abstract

Ordinary differential equations (ODEs), commonly used to characterize the dynamic systems, are difficult to propose in closed-form for many complicated scientific applications, even with the help of domain expert. We propose a fast and accurate data-driven method, MAGI-X, to learn the unknown dynamic from the observation data in a non-parametric fashion, without the need of any domain knowledge. Unlike the existing methods that mainly rely on the costly numerical integration, MAGI-X utilizes the powerful functional approximator of neural network to learn the unknown nonlinear dynamic within the MAnifold-constrained Gaussian process Inference (MAGI) framework that completely circumvents the numerical integration. Comparing against the state-of-the-art methods on three realistic examples, MAGI-X achieves competitive accuracy in both fitting and forecasting while only taking a fraction of computational time. Moreover, MAGI-X provides practical solution for the inference of partial observed systems, which no previous method is able to handle.

Keywords

Cite

@article{arxiv.2105.12894,
  title  = {MAGI-X: Manifold-Constrained Gaussian Process Inference for Unknown System Dynamics},
  author = {Chaofan Huang and Simin Ma and Shihao Yang},
  journal= {arXiv preprint arXiv:2105.12894},
  year   = {2021}
}
R2 v1 2026-06-24T02:30:39.925Z