The fast committor machine: Interpretable prediction with kernels
Abstract
In the study of stochastic systems, the committor function describes the probability that a system starting from an initial configuration will reach a set before a set . This paper introduces an efficient and interpretable algorithm for approximating the committor, called the "fast committor machine" (FCM). The FCM uses simulated trajectory data to build a kernel-based model of the committor. The kernel function is constructed to emphasize low-dimensional subspaces that optimally describe the to transitions. The coefficients in the kernel model are determined using randomized linear algebra, leading to a runtime that scales linearly in the number of data points. In numerical experiments involving a triple-well potential and alanine dipeptide, the FCM yields higher accuracy and trains more quickly than a neural network with the same number of parameters. The FCM is also more interpretable than the neural net.
Cite
@article{arxiv.2405.10410,
title = {The fast committor machine: Interpretable prediction with kernels},
author = {D. Aristoff and M. Johnson and G. Simpson and R. J. Webber},
journal= {arXiv preprint arXiv:2405.10410},
year = {2024}
}
Comments
10 pages, 7 figures