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Regression Deep Neural Networks for top-quark-pair resonance finding in the dilepton channel: feasibility study and foreseen improvements over traditional analysis techniques with the ATLAS experiment at the LHC

The ATLAS experiment at the LHC has the potential to find evidences of new physics beyond the Standard Model (BSM). Some BSM theories predict the existence of new massive particles decaying to pairs of top quarks ($t\bar{t}$), that can be detected by ATLAS. The key distribution to consider to prove...

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Autor principal: Tilotta, Daniele
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:http://cds.cern.ch/record/2763283
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author Tilotta, Daniele
author_facet Tilotta, Daniele
author_sort Tilotta, Daniele
collection CERN
description The ATLAS experiment at the LHC has the potential to find evidences of new physics beyond the Standard Model (BSM). Some BSM theories predict the existence of new massive particles decaying to pairs of top quarks ($t\bar{t}$), that can be detected by ATLAS. The key distribution to consider to prove the existence of such hypothetical particles is the invariant mass of the reconstructed $t\bar{t}$ pair, $m_{t\bar{t}}$. The reconstruction of such an invariant mass from the detected particles in each event is particularly hard in the dilepton $t\bar{t}$ decay channel, where the final states include two neutrinos, which always escapes undetected. Several traditional analysis techniques already exist, but a new data analysis tool could improve the accuracy of the $m_{t\bar{t}}$ estimate. This thesis consists of a feasibility study, in which deep learning, an innovative multivariate analysis technique, is applied to simulated ATLAS events to perform a regression task. A deep neural network is successfully implemented in the feed-forward architecture and it proves to be a useful tool for reconstructing the invariant mass of top-quark pairs decaying in the dilepton channel. Comparing this innovative method with some of the most commonly used traditional analysis techniques, it was possible to show significant performance improvements in both the SM and BSM scenarios.
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spelling cern-27632832021-04-23T09:18:36Zhttp://cds.cern.ch/record/2763283engTilotta, DanieleRegression Deep Neural Networks for top-quark-pair resonance finding in the dilepton channel: feasibility study and foreseen improvements over traditional analysis techniques with the ATLAS experiment at the LHCDetectors and Experimental TechniquesThe ATLAS experiment at the LHC has the potential to find evidences of new physics beyond the Standard Model (BSM). Some BSM theories predict the existence of new massive particles decaying to pairs of top quarks ($t\bar{t}$), that can be detected by ATLAS. The key distribution to consider to prove the existence of such hypothetical particles is the invariant mass of the reconstructed $t\bar{t}$ pair, $m_{t\bar{t}}$. The reconstruction of such an invariant mass from the detected particles in each event is particularly hard in the dilepton $t\bar{t}$ decay channel, where the final states include two neutrinos, which always escapes undetected. Several traditional analysis techniques already exist, but a new data analysis tool could improve the accuracy of the $m_{t\bar{t}}$ estimate. This thesis consists of a feasibility study, in which deep learning, an innovative multivariate analysis technique, is applied to simulated ATLAS events to perform a regression task. A deep neural network is successfully implemented in the feed-forward architecture and it proves to be a useful tool for reconstructing the invariant mass of top-quark pairs decaying in the dilepton channel. Comparing this innovative method with some of the most commonly used traditional analysis techniques, it was possible to show significant performance improvements in both the SM and BSM scenarios.CERN-THESIS-2020-319oai:cds.cern.ch:27632832021-04-13T13:09:49Z
spellingShingle Detectors and Experimental Techniques
Tilotta, Daniele
Regression Deep Neural Networks for top-quark-pair resonance finding in the dilepton channel: feasibility study and foreseen improvements over traditional analysis techniques with the ATLAS experiment at the LHC
title Regression Deep Neural Networks for top-quark-pair resonance finding in the dilepton channel: feasibility study and foreseen improvements over traditional analysis techniques with the ATLAS experiment at the LHC
title_full Regression Deep Neural Networks for top-quark-pair resonance finding in the dilepton channel: feasibility study and foreseen improvements over traditional analysis techniques with the ATLAS experiment at the LHC
title_fullStr Regression Deep Neural Networks for top-quark-pair resonance finding in the dilepton channel: feasibility study and foreseen improvements over traditional analysis techniques with the ATLAS experiment at the LHC
title_full_unstemmed Regression Deep Neural Networks for top-quark-pair resonance finding in the dilepton channel: feasibility study and foreseen improvements over traditional analysis techniques with the ATLAS experiment at the LHC
title_short Regression Deep Neural Networks for top-quark-pair resonance finding in the dilepton channel: feasibility study and foreseen improvements over traditional analysis techniques with the ATLAS experiment at the LHC
title_sort regression deep neural networks for top-quark-pair resonance finding in the dilepton channel: feasibility study and foreseen improvements over traditional analysis techniques with the atlas experiment at the lhc
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/2763283
work_keys_str_mv AT tilottadaniele regressiondeepneuralnetworksfortopquarkpairresonancefindinginthedileptonchannelfeasibilitystudyandforeseenimprovementsovertraditionalanalysistechniqueswiththeatlasexperimentatthelhc