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Generative models uncertainty estimation
In recent years fully-parametric fast simulation methods based on generative models have been proposed for a variety of high-energy physics detectors. By their nature, the quality of data-driven models degrades in the regions of the phase space where the data are sparse. Since machine-learning model...
Autores principales: | , , , |
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Lenguaje: | eng |
Publicado: |
2023
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Materias: | |
Acceso en línea: | https://dx.doi.org/10.1088/1742-6596/2438/1/012088 http://cds.cern.ch/record/2837844 |
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author | Anderlini, Lucio Chimpoesh, Constantine Kazeev, Nikita Shishigina, Agata |
author_facet | Anderlini, Lucio Chimpoesh, Constantine Kazeev, Nikita Shishigina, Agata |
author_sort | Anderlini, Lucio |
collection | CERN |
description | In recent years fully-parametric fast simulation methods based on generative models have been proposed for a variety of high-energy physics detectors. By their nature, the quality of data-driven models degrades in the regions of the phase space where the data are sparse. Since machine-learning models are hard to analyse from the physical principles, the commonly used testing procedures are performed in a data-driven way and can’t be reliably used in such regions. In our work we propose three methods to estimate the uncertainty of generative models inside and outside of the training phase space region, along with data-driven calibration techniques. A test of the proposed methods on the LHCb RICH fast simulation is also presented. |
id | cern-2837844 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2023 |
record_format | invenio |
spelling | cern-28378442023-03-05T03:26:54Zdoi:10.1088/1742-6596/2438/1/012088http://cds.cern.ch/record/2837844engAnderlini, LucioChimpoesh, ConstantineKazeev, NikitaShishigina, AgataGenerative models uncertainty estimationParticle Physics - PhenomenologyParticle Physics - ExperimentComputing and ComputersIn recent years fully-parametric fast simulation methods based on generative models have been proposed for a variety of high-energy physics detectors. By their nature, the quality of data-driven models degrades in the regions of the phase space where the data are sparse. Since machine-learning models are hard to analyse from the physical principles, the commonly used testing procedures are performed in a data-driven way and can’t be reliably used in such regions. In our work we propose three methods to estimate the uncertainty of generative models inside and outside of the training phase space region, along with data-driven calibration techniques. A test of the proposed methods on the LHCb RICH fast simulation is also presented.In recent years fully-parametric fast simulation methods based on generative models have been proposed for a variety of high-energy physics detectors. By their nature, the quality of data-driven models degrades in the regions of the phase space where the data are sparse. Since machine-learning models are hard to analyse from the physical principles, the commonly used testing procedures are performed in a data-driven way and can't be reliably used in such regions. In our work we propose three methods to estimate the uncertainty of generative models inside and outside of the training phase space region, along with data-driven calibration techniques. A test of the proposed methods on the LHCb RICH fast simulation is also presented.arXiv:2210.09767CERN-Poster-2021-1059oai:cds.cern.ch:28378442023 |
spellingShingle | Particle Physics - Phenomenology Particle Physics - Experiment Computing and Computers Anderlini, Lucio Chimpoesh, Constantine Kazeev, Nikita Shishigina, Agata Generative models uncertainty estimation |
title | Generative models uncertainty estimation |
title_full | Generative models uncertainty estimation |
title_fullStr | Generative models uncertainty estimation |
title_full_unstemmed | Generative models uncertainty estimation |
title_short | Generative models uncertainty estimation |
title_sort | generative models uncertainty estimation |
topic | Particle Physics - Phenomenology Particle Physics - Experiment Computing and Computers |
url | https://dx.doi.org/10.1088/1742-6596/2438/1/012088 http://cds.cern.ch/record/2837844 |
work_keys_str_mv | AT anderlinilucio generativemodelsuncertaintyestimation AT chimpoeshconstantine generativemodelsuncertaintyestimation AT kazeevnikita generativemodelsuncertaintyestimation AT shishiginaagata generativemodelsuncertaintyestimation |