中文

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 N=4\mathcal{N}=4 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 99.996%99.996\% 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 85.5%85.5\% 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}
}