Learning efficient and provably convergent splitting methods
L. M. Kreusser, H. E. Lockyer, E. H. M\"uller, P. Singh

TL;DR
This paper introduces a framework for machine-learned splitting methods that are both computationally efficient for large timesteps and have provable convergence and conservation guarantees for small timesteps, improving efficiency in solving IVPs.
Contribution
It develops a novel framework for learning splitting methods with theoretical convergence and conservation guarantees, optimized for limited computational resources.
Findings
Learned methods converge quadratically in timestep size.
Learned methods outperform traditional methods for Schrödinger equation with limited resources.
Framework ensures both efficiency and theoretical guarantees.
Abstract
Splitting methods are widely used for solving initial value problems (IVPs) due to their ability to simplify complicated evolutions into more manageable subproblems which can be solved efficiently and accurately. Traditionally, these methods are derived using analytic and algebraic techniques from numerical analysis, including truncated Taylor series and their Lie algebraic analogue, the Baker--Campbell--Hausdorff formula. These tools enable the development of high-order numerical methods that provide exceptional accuracy for small timesteps. Moreover, these methods often (nearly) conserve important physical invariants, such as mass, unitarity, and energy. However, in many practical applications the computational resources are limited. Thus, it is crucial to identify methods that achieve the best accuracy within a fixed computational budget, which might require taking relatively large…
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Taxonomy
TopicsMatrix Theory and Algorithms · Advanced Optimization Algorithms Research · Iterative Methods for Nonlinear Equations
