Cargando…

Machine learning classification: case of Higgs boson CP state in H to tau tau$ decay at LHC

Machine learning (ML) techniques are rapidly finding a place among the methods of high-energy physics data analysis. Different approaches are explored concerning how much effort should be put into building high-level variables based on physics insight into the problem, and when it is enough to rely...

Descripción completa

Detalles Bibliográficos
Autores principales: Lasocha, K., Richter-Was, E., Tracz, D., Was, Z., Winkowska, P.
Lenguaje:eng
Publicado: 2018
Materias:
Acceso en línea:https://dx.doi.org/10.1103/PhysRevD.100.113001
http://cds.cern.ch/record/2653082
_version_ 1780961014415622144
author Lasocha, K.
Richter-Was, E.
Tracz, D.
Was, Z.
Winkowska, P.
author_facet Lasocha, K.
Richter-Was, E.
Tracz, D.
Was, Z.
Winkowska, P.
author_sort Lasocha, K.
collection CERN
description Machine learning (ML) techniques are rapidly finding a place among the methods of high-energy physics data analysis. Different approaches are explored concerning how much effort should be put into building high-level variables based on physics insight into the problem, and when it is enough to rely on low-level ones, allowing ML methods to find patterns without an explicit physics model. In this paper we continue the discussion of previous publications on the CP state of the Higgs boson measurement of the H→ττ decay channel with the consecutive τ±→ρ±ν; ρ±→π±π0 and τ±→a1±ν; a1±→ρ0π±→3π± cascade decays. The discrimination of the Higgs boson CP state is studied as a binary classification problem between CP even (scalar) and CP odd (pseudoscalar) states using a deep neural network (DNN). Improvements on the classification from the constraints on directly nonmeasurable outgoing neutrinos are discussed. We find that, once added, they enhance the sensitivity sizably, even if only imperfect information is provided. In addition to DNNs we also evaluate and compare other ML methods: boosted trees, random forests, and support vector machines.
id cern-2653082
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2018
record_format invenio
spelling cern-26530822021-02-27T04:16:14Zdoi:10.1103/PhysRevD.100.113001http://cds.cern.ch/record/2653082engLasocha, K.Richter-Was, E.Tracz, D.Was, Z.Winkowska, P.Machine learning classification: case of Higgs boson CP state in H to tau tau$ decay at LHChep-phParticle Physics - PhenomenologyMachine learning (ML) techniques are rapidly finding a place among the methods of high-energy physics data analysis. Different approaches are explored concerning how much effort should be put into building high-level variables based on physics insight into the problem, and when it is enough to rely on low-level ones, allowing ML methods to find patterns without an explicit physics model. In this paper we continue the discussion of previous publications on the CP state of the Higgs boson measurement of the H→ττ decay channel with the consecutive τ±→ρ±ν; ρ±→π±π0 and τ±→a1±ν; a1±→ρ0π±→3π± cascade decays. The discrimination of the Higgs boson CP state is studied as a binary classification problem between CP even (scalar) and CP odd (pseudoscalar) states using a deep neural network (DNN). Improvements on the classification from the constraints on directly nonmeasurable outgoing neutrinos are discussed. We find that, once added, they enhance the sensitivity sizably, even if only imperfect information is provided. In addition to DNNs we also evaluate and compare other ML methods: boosted trees, random forests, and support vector machines.Machine Learning (ML) techniques are rapidly finding a place among the methods of High Energy Physics data analysis. Different approaches are explored concerning how much effort should be put into building high-level variables based on physics insight into the problem, and when it is enough to rely on low-level ones, allowing ML methods to find patterns without explicit physics model. In this paper we continue the discussion of previous publications on the CP state of the Higgs boson measurement of the H to tau tau decay channel with the consecutive tau^pm to rho^pm nu; rho^pm to pi^pm pi^0 and tau^pm to a_1^pm nu; a_1^pm to rho^0 pi^pm to 3 pi^pm cascade decays. The discrimination of the Higgs boson CP state is studied as a binary classification problem between CP-even (scalar) and CP-odd (pseudoscalar), using Deep Neural Network (DNN). Improvements on the classification from the constraints on directly non-measurable outgoing neutrinos are discussed. We find, that once added, they enhance the sensitivity sizably, even if only imperfect information is provided. In addition to DNN we also evaluate and compare other ML methods: Boosted Trees (BT), Random Forest (RF) and Support Vector Machine (SVN).arXiv:1812.08140IFJPAN-IV-2018-20oai:cds.cern.ch:26530822018-12-19
spellingShingle hep-ph
Particle Physics - Phenomenology
Lasocha, K.
Richter-Was, E.
Tracz, D.
Was, Z.
Winkowska, P.
Machine learning classification: case of Higgs boson CP state in H to tau tau$ decay at LHC
title Machine learning classification: case of Higgs boson CP state in H to tau tau$ decay at LHC
title_full Machine learning classification: case of Higgs boson CP state in H to tau tau$ decay at LHC
title_fullStr Machine learning classification: case of Higgs boson CP state in H to tau tau$ decay at LHC
title_full_unstemmed Machine learning classification: case of Higgs boson CP state in H to tau tau$ decay at LHC
title_short Machine learning classification: case of Higgs boson CP state in H to tau tau$ decay at LHC
title_sort machine learning classification: case of higgs boson cp state in h to tau tau$ decay at lhc
topic hep-ph
Particle Physics - Phenomenology
url https://dx.doi.org/10.1103/PhysRevD.100.113001
http://cds.cern.ch/record/2653082
work_keys_str_mv AT lasochak machinelearningclassificationcaseofhiggsbosoncpstateinhtotautaudecayatlhc
AT richterwase machinelearningclassificationcaseofhiggsbosoncpstateinhtotautaudecayatlhc
AT traczd machinelearningclassificationcaseofhiggsbosoncpstateinhtotautaudecayatlhc
AT wasz machinelearningclassificationcaseofhiggsbosoncpstateinhtotautaudecayatlhc
AT winkowskap machinelearningclassificationcaseofhiggsbosoncpstateinhtotautaudecayatlhc