Machine-learning (ML) techniques are explored to identify and classify hadronic decays of highly Lorentz-boosted W/Z/Higgs bosons and top quarks. Techniques without ML have also been evaluated and are included for comparison. The identification performances of a variety of algorithms are characterized in simulated events and directly compared with data. The algorithms are validated using proton-proton collision data at s = 13TeV, corresponding to an integrated luminosity of 35.9 fb-1. Systematic uncertainties are assessed by comparing the results obtained using simulation and collision data. The new techniques studied in this paper provide significant performance improvements over non-ML techniques, reducing the background rate by up to an order of magnitude at the same signal efficiency.

Sirunyan, A., Tumasyan, A., Adam, W., Ambrogi, F., Bergauer, T., Dragicevic, M., et al. (2020). Identification of heavy, energetic, hadronically decaying particles using machine-learning techniques. JOURNAL OF INSTRUMENTATION, 15(6) [10.1088/1748-0221/15/06/P06005].

Identification of heavy, energetic, hadronically decaying particles using machine-learning techniques

Dinardo M. E.;Ghezzi A.;Govoni P.;Guzzi L.;Paganoni M.;De Fatis T. T.;Zuolo D.;Massironi A.;Gerosa R.;Lucchini M. T.;
2020

Abstract

Machine-learning (ML) techniques are explored to identify and classify hadronic decays of highly Lorentz-boosted W/Z/Higgs bosons and top quarks. Techniques without ML have also been evaluated and are included for comparison. The identification performances of a variety of algorithms are characterized in simulated events and directly compared with data. The algorithms are validated using proton-proton collision data at s = 13TeV, corresponding to an integrated luminosity of 35.9 fb-1. Systematic uncertainties are assessed by comparing the results obtained using simulation and collision data. The new techniques studied in this paper provide significant performance improvements over non-ML techniques, reducing the background rate by up to an order of magnitude at the same signal efficiency.
Articolo in rivista - Articolo scientifico
Large detector-systems performance; Pattern recognition, cluster finding, calibration and fitting methods;
English
2020
15
6
P06005
none
Sirunyan, A., Tumasyan, A., Adam, W., Ambrogi, F., Bergauer, T., Dragicevic, M., et al. (2020). Identification of heavy, energetic, hadronically decaying particles using machine-learning techniques. JOURNAL OF INSTRUMENTATION, 15(6) [10.1088/1748-0221/15/06/P06005].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/306705
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