JMLR

Physics-informed Kernel Learning

Authors
Nathan Doumèche Gérard Biau Francis Bach Claire Boyer
Research Topics
Nonparametric Statistics
Paper Information
  • Journal:
    Journal of Machine Learning Research
  • Added to Tracker:
    Sep 08, 2025
Abstract

Physics-informed machine learning typically integrates physical priors into the learning process by minimizing a loss function that includes both a data-driven term and a partial differential equation (PDE) regularization. Building on the formulation of the problem as a kernel regression task, we use Fourier methods to approximate the associated kernel, and propose a tractable estimator that minimizes the physics-informed risk function. We refer to this approach as physics-informed kernel learning (PIKL). This framework provides theoretical guarantees, enabling the quantification of the physical prior’s impact on convergence speed. We demonstrate the numerical performance of the PIKL estimator through simulations, both in the context of hybrid modeling and in solving PDEs. In particular, we show that PIKL can outperform physics-informed neural networks in terms of both accuracy and computation time. Additionally, we identify cases where PIKL surpasses traditional PDE solvers, particularly in scenarios with noisy boundary conditions.

Author Details
Nathan Doumèche
Author
Gérard Biau
Author
Francis Bach
Author
Claire Boyer
Author
Research Topics & Keywords
Nonparametric Statistics
Research Area
Citation Information
APA Format
Nathan Doumèche , Gérard Biau , Francis Bach & Claire Boyer . Physics-informed Kernel Learning. Journal of Machine Learning Research .
BibTeX Format
@article{paper531,
  title = { Physics-informed Kernel Learning },
  author = { Nathan Doumèche and Gérard Biau and Francis Bach and Claire Boyer },
  journal = { Journal of Machine Learning Research },
  url = { https://www.jmlr.org/papers/v26/24-1536.html }
}