Decoding the proton's gluonic density with lattice QCD-informed machine learning
Decoding the proton's gluonic density with lattice QCD-informed machine learning
We present a first machine learning-based decoding of the gluonic structure of the proton from lattice QCD using a variational autoencoder inverse mapper (VAIM). Harnessing the power of generative AI, we predict the parton distribution function (PDF) of the gluon given information on the reduced pseudo-Ioffe-time distributions (RpITDs) as calculated from an ensemble with lattice spacing $a\! \approx\! 0.09$ fm and a pion mass of $M_Ï\! \approx\! 310$ MeV. The resulting gluon PDF is consistent with phenomenological global fits within uncertainties, particularly in the intermediate-to-high-$x$ region where lattice data are most constraining. A subsequent correlation analysis confirms that the VAIM learns a meaningful latent representation, highlighting the potential of generative AI to bridge lattice QCD and phenomenological extractions within a unified analysis framework.
Brandon Kriesten、Alex NieMiera、William Good、T. J. Hobbs、Huey-Wen Lin
物理学
Brandon Kriesten,Alex NieMiera,William Good,T. J. Hobbs,Huey-Wen Lin.Decoding the proton's gluonic density with lattice QCD-informed machine learning[EB/OL].(2025-07-23)[2025-08-18].https://arxiv.org/abs/2507.17810.点此复制
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