Reconstruction of Gravitational Form Factors using Generative Machine Learning

Abstract

We develop a generative framework based on denoising diffusion for the model-independent reconstruction of hadronic form factors from sparse and noisy data. The generative prior is built from a large ensemble of synthetic curves drawn from ten distinct functional classes rooted in different theoretical approaches to hadron structure. Applied to the proton gravitational form factors A(t), J(t), and D(t), the framework yields non-parametric reconstructions consistent with lattice QCD across the full kinematic range 0 -t 2~GeV2, remaining robust even when only one or two conditioning points are retained. The densely sampled output enables a direct extraction of the chiral low-energy constants c8=-4.6 0.8~GeV-1 and c9=-0.61 0.19~GeV-1. Using these values at the physical pion mass, we obtain D(0)=-4.3 0.8 for the nucleon D-term.

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