Cargando…

A DNN for CMS track classification and selection

The upgrade of the track classification and selection step of the CMS tracking to a Deep Neural Network is presented. The CMS tracking follows an iterative approach: tracks are reconstructed in multiple passes starting from the ones that are easiest to find and moving to the ones with more complex...

Descripción completa

Detalles Bibliográficos
Autor principal: Giannini, Leonardo
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2872285
_version_ 1780978599692599296
author Giannini, Leonardo
author_facet Giannini, Leonardo
author_sort Giannini, Leonardo
collection CERN
description The upgrade of the track classification and selection step of the CMS tracking to a Deep Neural Network is presented. The CMS tracking follows an iterative approach: tracks are reconstructed in multiple passes starting from the ones that are easiest to find and moving to the ones with more complex characteristics (lower transverse momentum, high displacement). The track classification comes into play at the end of each iteration. A classifier using a multivariate analysis is applied after each iteration and several selection criteria are defined. If a track meets the high purity requirement, its hits are removed from the hit collection, thus simplifying the later iterations, and making the track classification an integral part of the reconstruction process. Tracks passing loose selections are also saved for physics analysis usage. The CMS experiment improved the track classification starting from a parametric selection used in Run 1, moving to a Boosted Decision Tree in Run 2, and finally to a Deep Neural Network in Run 3. An overview of the Deep Neural Network training and current performance is shown.
id cern-2872285
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
record_format invenio
spelling cern-28722852023-09-25T18:53:33Zhttp://cds.cern.ch/record/2872285engGiannini, LeonardoA DNN for CMS track classification and selectionDetectors and Experimental TechniquesThe upgrade of the track classification and selection step of the CMS tracking to a Deep Neural Network is presented. The CMS tracking follows an iterative approach: tracks are reconstructed in multiple passes starting from the ones that are easiest to find and moving to the ones with more complex characteristics (lower transverse momentum, high displacement). The track classification comes into play at the end of each iteration. A classifier using a multivariate analysis is applied after each iteration and several selection criteria are defined. If a track meets the high purity requirement, its hits are removed from the hit collection, thus simplifying the later iterations, and making the track classification an integral part of the reconstruction process. Tracks passing loose selections are also saved for physics analysis usage. The CMS experiment improved the track classification starting from a parametric selection used in Run 1, moving to a Boosted Decision Tree in Run 2, and finally to a Deep Neural Network in Run 3. An overview of the Deep Neural Network training and current performance is shown.CMS-CR-2023-142oai:cds.cern.ch:28722852023-08-30
spellingShingle Detectors and Experimental Techniques
Giannini, Leonardo
A DNN for CMS track classification and selection
title A DNN for CMS track classification and selection
title_full A DNN for CMS track classification and selection
title_fullStr A DNN for CMS track classification and selection
title_full_unstemmed A DNN for CMS track classification and selection
title_short A DNN for CMS track classification and selection
title_sort dnn for cms track classification and selection
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/2872285
work_keys_str_mv AT gianninileonardo adnnforcmstrackclassificationandselection
AT gianninileonardo dnnforcmstrackclassificationandselection