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Conditional Born machine for Monte Carlo event generation
Generative modeling is a promising task for near-term quantum devices, which can use the stochastic nature of quantum measurements as a random source. So-called Born machines are purely quantum models and promise to generate probability distributions in a quantum way, inaccessible to classical compu...
Autores principales: | , , , |
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Lenguaje: | eng |
Publicado: |
2022
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Materias: | |
Acceso en línea: | https://dx.doi.org/10.1103/PhysRevA.106.022612 http://cds.cern.ch/record/2825277 |
_version_ | 1780973763750264832 |
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author | Kiss, Oriel Grossi, Michele Kajomovitz, Enrique Vallecorsa, Sofia |
author_facet | Kiss, Oriel Grossi, Michele Kajomovitz, Enrique Vallecorsa, Sofia |
author_sort | Kiss, Oriel |
collection | CERN |
description | Generative modeling is a promising task for near-term quantum devices, which can use the stochastic nature of quantum measurements as a random source. So-called Born machines are purely quantum models and promise to generate probability distributions in a quantum way, inaccessible to classical computers. This paper presents an application of Born machines to Monte Carlo simulations and extends their reach to multivariate and conditional distributions. Models are run on (noisy) simulators and IBM Quantum superconducting quantum hardware. More specifically, Born machines are used to generate muonic force carrier (MFC) events resulting from scattering processes between muons and the detector material in high-energy physics collider experiments. MFCs are bosons appearing in beyond-the-standard-model theoretical frameworks, which are candidates for dark matter. Empirical evidence suggests that Born machines can reproduce the marginal distributions and correlations of data sets from Monte Carlo simulations. |
id | cern-2825277 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2022 |
record_format | invenio |
spelling | cern-28252772023-10-20T02:34:52Zdoi:10.1103/PhysRevA.106.022612http://cds.cern.ch/record/2825277engKiss, OrielGrossi, MicheleKajomovitz, EnriqueVallecorsa, SofiaConditional Born machine for Monte Carlo event generationquant-phcs.LGhep-exQuantum TechnologyComputing and ComputersParticle Physics - ExperimentGenerative modeling is a promising task for near-term quantum devices, which can use the stochastic nature of quantum measurements as a random source. So-called Born machines are purely quantum models and promise to generate probability distributions in a quantum way, inaccessible to classical computers. This paper presents an application of Born machines to Monte Carlo simulations and extends their reach to multivariate and conditional distributions. Models are run on (noisy) simulators and IBM Quantum superconducting quantum hardware. More specifically, Born machines are used to generate muonic force carrier (MFC) events resulting from scattering processes between muons and the detector material in high-energy physics collider experiments. MFCs are bosons appearing in beyond-the-standard-model theoretical frameworks, which are candidates for dark matter. Empirical evidence suggests that Born machines can reproduce the marginal distributions and correlations of data sets from Monte Carlo simulations.Generative modeling is a promising task for near-term quantum devices, which can use the stochastic nature of quantum measurements as a random source. So called Born machines are purely quantum models and promise to generate probability distributions in a quantum way, inaccessible to classical computers. This paper presents an application of Born machines to Monte Carlo simulations and extends their reach to multivariate and conditional distributions. Models are run on (noisy) simulators and IBM Quantum superconducting quantum hardware. More specifically, Born machines are used to generate muonic force carrier (MFC) events resulting from scattering processes between muons and the detector material in high-energy physics colliders experiments. MFCs are bosons appearing in beyond-the-standard-model theoretical frameworks, which are candidates for dark matter. Empirical evidence suggests that Born machines can reproduce the marginal distributions and correlations of data sets from Monte Carlo simulations.arXiv:2205.07674oai:cds.cern.ch:28252772022-05-16 |
spellingShingle | quant-ph cs.LG hep-ex Quantum Technology Computing and Computers Particle Physics - Experiment Kiss, Oriel Grossi, Michele Kajomovitz, Enrique Vallecorsa, Sofia Conditional Born machine for Monte Carlo event generation |
title | Conditional Born machine for Monte Carlo event generation |
title_full | Conditional Born machine for Monte Carlo event generation |
title_fullStr | Conditional Born machine for Monte Carlo event generation |
title_full_unstemmed | Conditional Born machine for Monte Carlo event generation |
title_short | Conditional Born machine for Monte Carlo event generation |
title_sort | conditional born machine for monte carlo event generation |
topic | quant-ph cs.LG hep-ex Quantum Technology Computing and Computers Particle Physics - Experiment |
url | https://dx.doi.org/10.1103/PhysRevA.106.022612 http://cds.cern.ch/record/2825277 |
work_keys_str_mv | AT kissoriel conditionalbornmachineformontecarloeventgeneration AT grossimichele conditionalbornmachineformontecarloeventgeneration AT kajomovitzenrique conditionalbornmachineformontecarloeventgeneration AT vallecorsasofia conditionalbornmachineformontecarloeventgeneration |