Symbolic Regression of Generalized Parton Distributions using PySR

ORAL

Abstract

AI/ML informed Symbolic Regression is the next stage of scientific modeling. We utilize a highly customizable symbolic regression package "PySR" to model the x and t dependence of the flavor isovector combination H^{u-d}(x,t,ζ,Q^2) at ζ=0 and Q^2= 4 GeV^2. These PySR models were trained on various ranges of GPD pseudodata provided by both Lattice QCD and contemporary models such as GGL and VGG. In addition to PySR penalizing more complex models, PySR GPDs were also selected based on a custom loss function that both encouraged low mean-squared error and penalized expressions that failed to satisfy various physical constraints for GPDs. Mean-Squared error of PySR GPDs were compared with fits to common GPD parameterizations. Some PySR derived GPDs factorize in x and t. We also explore their consistency in the forward limit with current LHAPDF extractions.

*This work was supported by the DOE

Publication: Title:
Symbolic Regression of Generalized Parton Distributions using PySR
Category: Planned Paper
Estimated Submission: September 2024

Presenters

  • Andrew S Dotson

    • New Mexico State University

Authors

  • Andrew S Dotson

    • New Mexico State University
  • Anusha Singireddy

    • Old Dominion University
  • Zaki A Panjsheeri

    • University of Virginia
  • Douglas Adams

    • University of Virginia
  • Simonetta Liuti

    • University of Virginia
  • Yaohang Li

    • Old Dominion University
  • Huey-Wen Lin

    • Michigan State University
  • Marija Cuic

    • University of Virginia
  • Adel U Khawaja

    • University of Virginia
  • Joshua Beethoven Pangan Bautista

    • University of Virginia
  • Emmanuel Ortiz-Pacheco

    • Michigan State University
  • Gia-Wei Chern

    • University of Virginia