https://arxiv.org/abs/2212.14319
'Gaussian Process Priors for Systems of Linear Partial Differential Equations with Constant Coefficients'
- Marc Härkönen, Markus Lange-Hegermann, Bogdan Raiţă
For a function to be a solution to a given linear PDE is itself a linear property, and so it can be expected to interface nicely with Gaussian processes. This work introduces some kernels for GP modelling of functions which automatically satisfy a given (linear, constant-coefficient) PDE.
Gaussian Process Priors for Systems of Linear Partial Differential Equations with Constant Coefficients
Partial differential equations (PDEs) are important tools to model physical systems and including them into machine learning models is an important way of incorporating physical knowledge. Given any system of linear PDEs with constant coefficients, we propose a family of Gaussian process (GP) priors, which we call EPGP, such that all realizations are exact solutions of this system. We apply the Ehrenpreis-Palamodov fundamental principle, which works as a non-linear Fourier transform, to construct GP kernels mirroring standard spectral methods for GPs. Our approach can infer probable solutions of linear PDE systems from any data such as noisy measurements, or pointwise defined initial and boundary conditions. Constructing EPGP-priors is algorithmic, generally applicable, and comes with a sparse version (S-EPGP) that learns the relevant spectral frequencies and works better for big data sets. We demonstrate our approach on three families of systems of PDEs, the heat equation, wave equation, and Maxwell's equations, where we improve upon the state of the art in computation time and precision, in some experiments by several orders of magnitude.