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Reconstructing the Kinematics of Deep Inelastic Scattering with Deep Learning

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arxiv 2110.05505 v2 pith:5XIGSEJT submitted 2021-10-11 hep-ex hep-phnucl-ex

Reconstructing the Kinematics of Deep Inelastic Scattering with Deep Learning

classification hep-ex hep-phnucl-ex
keywords deepmethodeventsfullfutureinelastickinematickinematics
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We introduce a method to reconstruct the kinematics of neutral-current deep inelastic scattering (DIS) using a deep neural network (DNN). Unlike traditional methods, it exploits the full kinematic information of both the scattered electron and the hadronic-final state, and it accounts for QED radiation by identifying events with radiated photons and event-level momentum imbalance. The method is studied with simulated events at HERA and the future Electron-Ion Collider (EIC). We show that the DNN method outperforms all the traditional methods over the full phase space, improving resolution and reducing bias. Our method has the potential to extend the kinematic reach of future experiments at the EIC, and thus their discovery potential in polarized and nuclear DIS.

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Cited by 2 Pith papers

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