Cargando…

A method for inferring signal strength modifiers by conditional invertible neural networks

The continuous growth in model complexity in high-energy physics (HEP) collider experiments demands increasingly time-consuming model fits. We show first results on the application of conditional invertible networks (cINNs) to this challenge. Specifically, we construct and train a cINN to learn the...

Descripción completa

Detalles Bibliográficos
Autores principales: Farkas, Mate Zoltan, Diekmann, Svenja, Eich, Niclas Steve, Erdmann, Martin
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2872295
_version_ 1780978601899851776
author Farkas, Mate Zoltan
Diekmann, Svenja
Eich, Niclas Steve
Erdmann, Martin
author_facet Farkas, Mate Zoltan
Diekmann, Svenja
Eich, Niclas Steve
Erdmann, Martin
author_sort Farkas, Mate Zoltan
collection CERN
description The continuous growth in model complexity in high-energy physics (HEP) collider experiments demands increasingly time-consuming model fits. We show first results on the application of conditional invertible networks (cINNs) to this challenge. Specifically, we construct and train a cINN to learn the mapping from signal strength modifiers to observables andits inverse. The resulting network infers the posterior distribution of the signal strength modifiers rapidly and for low computational cost. We present performance indicators of such a setup including the treatment of systematic uncertainties. Additionally, we highlight the features of cINNs estimating the signal strength for a vector boson associated Higgs production analysis of simulated samples of events, which include a simulation of the CMS detector.
id cern-2872295
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
record_format invenio
spelling cern-28722952023-09-25T18:53:33Zhttp://cds.cern.ch/record/2872295engFarkas, Mate ZoltanDiekmann, SvenjaEich, Niclas SteveErdmann, MartinA method for inferring signal strength modifiers by conditional invertible neural networksDetectors and Experimental TechniquesThe continuous growth in model complexity in high-energy physics (HEP) collider experiments demands increasingly time-consuming model fits. We show first results on the application of conditional invertible networks (cINNs) to this challenge. Specifically, we construct and train a cINN to learn the mapping from signal strength modifiers to observables andits inverse. The resulting network infers the posterior distribution of the signal strength modifiers rapidly and for low computational cost. We present performance indicators of such a setup including the treatment of systematic uncertainties. Additionally, we highlight the features of cINNs estimating the signal strength for a vector boson associated Higgs production analysis of simulated samples of events, which include a simulation of the CMS detector.CMS-CR-2023-162oai:cds.cern.ch:28722952023-09-16
spellingShingle Detectors and Experimental Techniques
Farkas, Mate Zoltan
Diekmann, Svenja
Eich, Niclas Steve
Erdmann, Martin
A method for inferring signal strength modifiers by conditional invertible neural networks
title A method for inferring signal strength modifiers by conditional invertible neural networks
title_full A method for inferring signal strength modifiers by conditional invertible neural networks
title_fullStr A method for inferring signal strength modifiers by conditional invertible neural networks
title_full_unstemmed A method for inferring signal strength modifiers by conditional invertible neural networks
title_short A method for inferring signal strength modifiers by conditional invertible neural networks
title_sort method for inferring signal strength modifiers by conditional invertible neural networks
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/2872295
work_keys_str_mv AT farkasmatezoltan amethodforinferringsignalstrengthmodifiersbyconditionalinvertibleneuralnetworks
AT diekmannsvenja amethodforinferringsignalstrengthmodifiersbyconditionalinvertibleneuralnetworks
AT eichniclassteve amethodforinferringsignalstrengthmodifiersbyconditionalinvertibleneuralnetworks
AT erdmannmartin amethodforinferringsignalstrengthmodifiersbyconditionalinvertibleneuralnetworks
AT farkasmatezoltan methodforinferringsignalstrengthmodifiersbyconditionalinvertibleneuralnetworks
AT diekmannsvenja methodforinferringsignalstrengthmodifiersbyconditionalinvertibleneuralnetworks
AT eichniclassteve methodforinferringsignalstrengthmodifiersbyconditionalinvertibleneuralnetworks
AT erdmannmartin methodforinferringsignalstrengthmodifiersbyconditionalinvertibleneuralnetworks