arXiv Analytics

Sign in

arXiv:2007.13681 [hep-ex]AbstractReferencesReviewsResources

Graph Neural Networks in Particle Physics

Jonathan Shlomi, Peter Battaglia, Jean-Roch Vlimant

Published 2020-07-27Version 1

Particle physics is a branch of science aiming at discovering the fundamental laws of matter and forces. Graph neural networks are trainable functions which operate on graphs -- sets of elements and their pairwise relations -- and are a central method within the broader field of geometric deep learning. They are very expressive and have demonstrated superior performance to other classical deep learning approaches in a variety of domains. The data in particle physics are often represented by sets and graphs and as such, graph neural networks offer key advantages. Here we review various applications of graph neural networks in particle physics, including different graph constructions, model architectures and learning objectives, as well as key open problems in particle physics for which graph neural networks are promising.

Comments: 29 pages, 11 figures, submitted to Machine Learning: Science and Technology, Focus on Machine Learning for Fundamental Physics collection
Categories: hep-ex, hep-ph
Related articles: Most relevant | Search more
arXiv:hep-ex/0210052 (Published 2002-10-22)
Particle Physics at Future Colliders
arXiv:2112.09548 [hep-ex] (Published 2021-12-16)
A note on blind technique for new physics searches in particle physics
arXiv:1509.08417 [hep-ex] (Published 2015-09-28)
A Vision of Nuclear and Particle Physics