SCYNet: testing supersymmetric models at the LHC with neural networks

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Abstract

SCYNet (SUSY Calculating Yield Net) is a tool for testing supersymmetric models against LHC data. It uses neural network regression for a fast evaluation of the profile likelihood ratio. Two neural network approaches have been developed: one network has been trained using the parameters of the 11-dimensional phenomenological Minimal Supersymmetric Standard Model (pMSSM-11) as an input and evaluates the corresponding profile likelihood ratio within milliseconds. It can thus be used in global pMSSM-11 fits without time penalty. In the second approach, the neural network has been trained using model-independent signature-related objects, such as energies and particle multiplicities, which were estimated from the parameters of a given new physics model.

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Bechtle, P., Belkner, S., Dercks, D., Hamer, M., Keller, T., Krämer, M., … Tattersall, J. (2017). SCYNet: testing supersymmetric models at the LHC with neural networks. European Physical Journal C, 77(10). https://doi.org/10.1140/epjc/s10052-017-5224-8

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