Empirical fits to inclusive electron-carbon scattering data obtained by deep-learning methods
Empirical fits to inclusive electron-carbon scattering data obtained by deep-learning methods
Employing the neural network framework, we obtain empirical fits to the electron-scattering cross sections for carbon over a broad kinematic region, extending from the quasielastic peak through resonance excitation to the onset of deep-inelastic scattering. We consider two different methods of obtaining such model-independent parametrizations and the corresponding uncertainties: based …