2-3 diciembre 2024
Universe
Europe/Madrid timezone

Offline electron identification using a Deep Neural Network (12+3)

2 dic. 2024 15:35
12m
1001-Primera-1-1-1 - Paterna. Seminario (Universe)

1001-Primera-1-1-1 - Paterna. Seminario

Universe

60
Lightining talk (for students)

Ponente

Enrique Valiente Moreno (CSIC-IFIC (UV))

Descripción

Previously in ATLAS a likelihood approach has been used for prompt electron identification against different possible backgrounds.
Over the last few years, great efforts have been made in order to develop a versatile, powerful and reliable deep neural network (DNN) that is able to perform a multinomial classification of electrons according to different pre-defined classes. Once this machine learning algorithm learns the fundamental characteristics of each electron type, different discriminants can be built out of the multinomial scores given by the DNN in order to decide to decide whether an electron can be identifed as prompt within a pre-defined efficiency.

Autor primario

Enrique Valiente Moreno (CSIC-IFIC (UV))

Materiales de la presentación

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