Published February 3, 2025 | Published
Journal Article Open

Learning the simplicity of scattering amplitudes

  • 1. ROR icon California Institute of Technology
  • 2. ROR icon Harvard University
  • 3. ROR icon AI Institute for Artificial Intelligence and Fundamental Interactions

Abstract

The simplification and reorganization of complex expressions lies at the core of scientific progress, particularly in theoretical high-energy physics. This work explores the application of machine learning to a particular facet of this challenge: the task of simplifying scattering amplitudes expressed in terms of spinor-helicity variables. We demonstrate that an encoder-decoder transformer architecture achieves impressive simplification capabilities for expressions composed of handfuls of terms. Lengthier expressions are implemented in an additional embedding network, trained using contrastive learning, which isolates subexpressions that are more likely to simplify. The resulting framework is capable of reducing expressions with hundreds of terms—a regular occurrence in quantum field theory calculations—to vastly simpler equivalent expressions. Starting from lengthy input expressions, our networks can generate the Parke-Taylor formula for five-point gluon scattering, as well as new compact expressions for five-point amplitudes involving scalars and gravitons. An interactive demonstration can be found at https://spinorhelicity.streamlit.app.

Copyright and License

Copyright C. Cheung et al. This work is licensed under the Creative Commons Attribution 4.0 International License.
Published by the SciPost Foundation.

Acknowledgement

The computations in this paper were run on the FASRC Cannon cluster supported by the FAS Division of Science Research Computing Group at Harvard University.

Funding

AD and MDS are supported in part by the National Science Foundation under Cooperative Agreement PHY-2019786 (The NSF AI Institute for Artificial Intelligence and Fundamental Interactions). CC is supported by the Department of Energy (Grant No. DESC0011632) and by the Walter Burke Institute for Theoretical Physics. This work was initiated
in part at the Aspen Center for Physics, which is supported by National Science Foundation grant PHY-2210452.

Files

SciPostPhys_18_2_040.pdf
Files (1.5 MB)
Name Size Download all
md5:699b215ff5338e0f5f639cddd73634c7
1.5 MB Preview Download

Additional details

Created:
February 7, 2025
Modified:
February 7, 2025