IFLP   13074
INSTITUTO DE FISICA LA PLATA
Unidad Ejecutora - UE
congresos y reuniones científicas
Título:
Hunting dark matter signals with deep learning at the LHC
Autor/es:
ANDRES DANIEL PEREZ
Lugar:
Puebla
Reunión:
Seminario; Seminario en el Centro Internacional de Física Fundamental (CIFFU) BUAP - Presentación Oral; 2021
Institución organizadora:
Centro Internacional de Física Fundamental (CIFFU) BUAP
Resumen:
We study several simplified dark matter models and their signatures at the LHC using Neural Networks. We focus on the usual monojet plus missing transverse energy channel, but to train the algorithms we organize the data in 2D histograms instead of event-by-event arrays. This results in a huge performance boost to distinguish between SM only and SM plus new physics signals. We found that Neural Network results do not change with the number of background events if they are shown as a function of S/√B, where S and B are the number of signal and background events per histogram, respectively. To keep a broader approach, we use the kinematic monojet features as input data. This provides flexibility to the method, since testing a particular model is straightforward, only the new physics monojet cross-section is needed. Furthermore, we discuss the network performance under incorrect assumptions. Finally, we propose multimodel classifiers to search and identify new signals in a more general way, for the next LHC run.