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Application of Adversarial Networks in search for four top quark production in CMS

One burden of high energy physics data analysis is uncertainty within the measurement, both systematically and statistically. Even with sophisticated neural network techniques that are used to assist in high energy physics measurements, the resulting measurement may suffer from both types of uncerta...

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Autor principal: Wachirapusitanand, Vichayanun
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:http://cds.cern.ch/record/2685342
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author Wachirapusitanand, Vichayanun
author_facet Wachirapusitanand, Vichayanun
author_sort Wachirapusitanand, Vichayanun
collection CERN
description One burden of high energy physics data analysis is uncertainty within the measurement, both systematically and statistically. Even with sophisticated neural network techniques that are used to assist in high energy physics measurements, the resulting measurement may suffer from both types of uncertainties. Fortunately, most types of systematic uncertainties are based on knowledge from information such as theoretical assumptions, for which the range and behaviour are known. It has been proposed to mitigate such systematic uncertainties by using a new type of neural network called adversarial neural network (ANN) that would make the discriminator less sensitive to these uncertainties, but this has not yet been demonstrated in a real LHC analysis. This work investigates ANNs using as a benchmark the search for the production of four top quarks, an extremely rare physics process at the LHC and one of the important processes that can prove or disprove the Standard Model. The search for four top quarks in some cases is sensitive to large systematic uncertainties. Discriminators based on traditional and adversarial neural networks are trained and chosen via hyperparameter adjustment. The expected cross section upper limit and expected significance for four top quark production is calculated using traditional neural networks and adversarial neural networks based on simulated proton-proton collisions within the Compact Muon Solenoid detector within Large Hadron Collider, and are compared to existing results. The improvement and further considerations to the search for rare processes at the LHC will be discussed.
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spelling cern-26853422019-10-17T14:32:19Zhttp://cds.cern.ch/record/2685342engWachirapusitanand, VichayanunApplication of Adversarial Networks in search for four top quark production in CMSDetectors and Experimental TechniquesOne burden of high energy physics data analysis is uncertainty within the measurement, both systematically and statistically. Even with sophisticated neural network techniques that are used to assist in high energy physics measurements, the resulting measurement may suffer from both types of uncertainties. Fortunately, most types of systematic uncertainties are based on knowledge from information such as theoretical assumptions, for which the range and behaviour are known. It has been proposed to mitigate such systematic uncertainties by using a new type of neural network called adversarial neural network (ANN) that would make the discriminator less sensitive to these uncertainties, but this has not yet been demonstrated in a real LHC analysis. This work investigates ANNs using as a benchmark the search for the production of four top quarks, an extremely rare physics process at the LHC and one of the important processes that can prove or disprove the Standard Model. The search for four top quarks in some cases is sensitive to large systematic uncertainties. Discriminators based on traditional and adversarial neural networks are trained and chosen via hyperparameter adjustment. The expected cross section upper limit and expected significance for four top quark production is calculated using traditional neural networks and adversarial neural networks based on simulated proton-proton collisions within the Compact Muon Solenoid detector within Large Hadron Collider, and are compared to existing results. The improvement and further considerations to the search for rare processes at the LHC will be discussed.CERN-THESIS-2019-100oai:cds.cern.ch:26853422019-08-08T16:41:21Z
spellingShingle Detectors and Experimental Techniques
Wachirapusitanand, Vichayanun
Application of Adversarial Networks in search for four top quark production in CMS
title Application of Adversarial Networks in search for four top quark production in CMS
title_full Application of Adversarial Networks in search for four top quark production in CMS
title_fullStr Application of Adversarial Networks in search for four top quark production in CMS
title_full_unstemmed Application of Adversarial Networks in search for four top quark production in CMS
title_short Application of Adversarial Networks in search for four top quark production in CMS
title_sort application of adversarial networks in search for four top quark production in cms
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/2685342
work_keys_str_mv AT wachirapusitanandvichayanun applicationofadversarialnetworksinsearchforfourtopquarkproductionincms