Graph Neural Networks for the Graphical Bootstrap
高能物理 - 理论
2026-07-03 v1 机器学习
摘要
We study a graph classification problem involving over 20 million graphs, arising from high-order perturbative computations of correlators in planar super-Yang--Mills, a model closely related to the theory of the strong nuclear force. We benchmark graph neural networks, including graph transformers, achieving robust generalization to larger graphs with up to ROC AUC. Then, we analyze how the models can be used to gain a computational speedup compared to the traditional graphical bootstrap algorithm, through shrinking the redundant data by up to at the level of denominator graphs. Finally, we study the embeddings of the models to investigate their interpretability.
引用
@article{arxiv.2607.03109,
title = {Graph Neural Networks for the Graphical Bootstrap},
author = {Rigers Aliaj and Gabriele Dian and Reza Doobary and Paul Heslop},
journal= {arXiv preprint arXiv:2607.03109},
year = {2026}
}