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arxiv: 1106.2808 · v1 · pith:VOP6TSKCnew · submitted 2011-06-14 · ✦ hep-ph · hep-ex

Neural network generated parametrizations of deeply virtual Compton form factors

classification ✦ hep-ph hep-ex
keywords comptondatadeeplydvcsformgeneratedneuraluncertainties
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We have generated a parametrization of the Compton form factor (CFF) H based on data from deeply virtual Compton scattering (DVCS) using neural networks. This approach offers an essentially model-independent fitting procedure, which provides realistic uncertainties. Furthermore, it facilitates propagation of uncertainties from experimental data to CFFs. We assumed dominance of the CFF H and used HERMES data on DVCS off unpolarized protons. We predict the beam charge-spin asymmetry for a proton at the kinematics of the COMPASS II experiment.

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    Quantum-inspired deep neural networks extract Compton form factors from JLab data with higher predictive accuracy and tighter uncertainties than classical DNNs on pseudodata benchmarks, then applied to real measurements.