Physics-Informed Machine Learning as a Kernel Method
Abstract
Physics-informed machine learning combines the expressiveness of data-based approaches with the interpretability of physical models. In this context, we consider a general regression problem where the empirical risk is regularized by a partial differential equation that quantifies the physical inconsistency. We prove that for linear differential priors, the problem can be formulated as a kernel regression task. Taking advantage of kernel theory, we derive convergence rates for the minimizer $\hat f_n$ of the regularized risk and show that $\hat f_n$ converges at least at the Sobolev minimax rate. However, faster rates can be achieved, depending on the physical error. This principle is illustrated with a one-dimensional example, supporting the claim that regularizing the empirical risk with physical information can be beneficial to the statistical performance of estimators.
Cite
Text
Doumèche et al. "Physics-Informed Machine Learning as a Kernel Method." Conference on Learning Theory, 2024.Markdown
[Doumèche et al. "Physics-Informed Machine Learning as a Kernel Method." Conference on Learning Theory, 2024.](https://mlanthology.org/colt/2024/doumeche2024colt-physicsinformed/)BibTeX
@inproceedings{doumeche2024colt-physicsinformed,
title = {{Physics-Informed Machine Learning as a Kernel Method}},
author = {Doumèche, Nathan and Bach, Francis and Biau, Gérard and Boyer, Claire},
booktitle = {Conference on Learning Theory},
year = {2024},
pages = {1399-1450},
volume = {247},
url = {https://mlanthology.org/colt/2024/doumeche2024colt-physicsinformed/}
}