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Deep Sets based Neural Networks for Impact Parameter Flavour Tagging in ATLAS

This work introduces a new architecture for Flavour Tagging based on Deep Sets, which models the jet as a set of tracks, in order to identify the experimental signatures of jets containing heavy flavour hadrons using the impact parameters and kinematics of the tracks. This approach is an evolution w...

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Autor principal: The ATLAS collaboration
Lenguaje:eng
Publicado: 2020
Materias:
Acceso en línea:http://cds.cern.ch/record/2718948
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author The ATLAS collaboration
author_facet The ATLAS collaboration
author_sort The ATLAS collaboration
collection CERN
description This work introduces a new architecture for Flavour Tagging based on Deep Sets, which models the jet as a set of tracks, in order to identify the experimental signatures of jets containing heavy flavour hadrons using the impact parameters and kinematics of the tracks. This approach is an evolution with respect to the Recurrent Neural Network (RNN) currently adopted in the ATLAS experiment, which treats track collections as a sequence. The Deep Sets model comprises a permutation-invariant and highly parallelisable architecture, leading to a significant decrease in training and evaluation time, and thus allowing for much faster turn-around times for optimisation. Additionally, this permutation invariance encoded in the model is more physically motivated than the sequence-based RNN. We compare the Deep Sets algorithm with the RNN benchmark, probe the model to interpret the information learned, and provide studies optimising the Deep Sets algorithm by loosening the track selection and including additional inputs.
id cern-2718948
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2020
record_format invenio
spelling cern-27189482021-04-18T19:41:19Zhttp://cds.cern.ch/record/2718948engThe ATLAS collaborationDeep Sets based Neural Networks for Impact Parameter Flavour Tagging in ATLASParticle Physics - ExperimentThis work introduces a new architecture for Flavour Tagging based on Deep Sets, which models the jet as a set of tracks, in order to identify the experimental signatures of jets containing heavy flavour hadrons using the impact parameters and kinematics of the tracks. This approach is an evolution with respect to the Recurrent Neural Network (RNN) currently adopted in the ATLAS experiment, which treats track collections as a sequence. The Deep Sets model comprises a permutation-invariant and highly parallelisable architecture, leading to a significant decrease in training and evaluation time, and thus allowing for much faster turn-around times for optimisation. Additionally, this permutation invariance encoded in the model is more physically motivated than the sequence-based RNN. We compare the Deep Sets algorithm with the RNN benchmark, probe the model to interpret the information learned, and provide studies optimising the Deep Sets algorithm by loosening the track selection and including additional inputs.ATL-PHYS-PUB-2020-014oai:cds.cern.ch:27189482020-05-25
spellingShingle Particle Physics - Experiment
The ATLAS collaboration
Deep Sets based Neural Networks for Impact Parameter Flavour Tagging in ATLAS
title Deep Sets based Neural Networks for Impact Parameter Flavour Tagging in ATLAS
title_full Deep Sets based Neural Networks for Impact Parameter Flavour Tagging in ATLAS
title_fullStr Deep Sets based Neural Networks for Impact Parameter Flavour Tagging in ATLAS
title_full_unstemmed Deep Sets based Neural Networks for Impact Parameter Flavour Tagging in ATLAS
title_short Deep Sets based Neural Networks for Impact Parameter Flavour Tagging in ATLAS
title_sort deep sets based neural networks for impact parameter flavour tagging in atlas
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2718948
work_keys_str_mv AT theatlascollaboration deepsetsbasedneuralnetworksforimpactparameterflavourtagginginatlas