Learning to Solve Related Linear Systems
Abstract
Solving multiple parametrised related systems is an essential component of many numerical tasks, and learning from the already solved systems will make this process faster. In this work, we propose a novel probabilistic linear solver over the parameter space. This leverages information from the solved linear systems in a regression setting to provide an efficient posterior mean and covariance. We advocate using this as companion regression model for the preconditioned conjugate gradient method, and discuss the favourable properties of the posterior mean and covariance as the initial guess and preconditioner. We also provide several design choices for this companion solver. Numerical experiments showcase the benefits of using our novel solver in a hyperparameter optimisation problem.
Cite
@article{arxiv.2503.17265,
title = {Learning to Solve Related Linear Systems},
author = {Disha Hegde and Jon Cockayne},
journal= {arXiv preprint arXiv:2503.17265},
year = {2025}
}
Comments
Accepted at the 1st International Conference on Probabilistic Numerics (ProbNum), 2025