27 October 2025 to 1 November 2025
Europe/Athens timezone

Lattice Determination of Parton Distributions Through Neural Network

Not scheduled
20m
Talk in workshop 1 "Non-perturbative approaches for hadron structure from low to high energy"

Speaker

Min-Huan Chu (Adam Mickiewicz University, Poznań)

Description

We propose a framework for the reconstruction of parton distribution functions (PDFs) and generalized parton distributions (GPDs) from lattice QCD, utilizing artificial neural networks (ANNs). Our approach combines two complementary methodologies: the Large Momentum Effective Theory (LaMET) and the short-distance operator expansion (SDE). To determine ANN-based PDFs and GPDs, we achieve a joint reconstruction that incorporates quasi-matrix elements from LaMET and matched Ioffe-time distributions derived from SDE. Our framework successfully recovers PDFs and GPDs from mock data and is applied for actual lattice QCD data. It mitigates the individual limitations inherent in LaMET and SDE, while leveraging the ANN architecture to enable a robust reconstruction.

Authors

Min-Huan Chu (Adam Mickiewicz University, Poznań) Jakub Wagner (National Centre for Nuclear Research) Krzysztof Cichy (Adam Mickiewicz University, Faculty of Physics) Martha Constantinou (Temple University) Pawel Sznajder (National Centre for Nuclear Research, Warsaw)

Presentation materials

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