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Reconstructing $S$-matrix Phases with Machine Learning

An important element of the $S$-matrix bootstrap program is the relationship between the modulus of an $S$-matrix element and its phase. Unitarity relates them by an integral equation. Even in the simplest case of elastic scattering, this integral equation cannot be solved analytically and numerical...

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Detalles Bibliográficos
Autores principales: Dersy, Aurélien, Schwartz, Matthew D., Zhiboedov, Alexander
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2868109
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author Dersy, Aurélien
Schwartz, Matthew D.
Zhiboedov, Alexander
author_facet Dersy, Aurélien
Schwartz, Matthew D.
Zhiboedov, Alexander
author_sort Dersy, Aurélien
collection CERN
description An important element of the $S$-matrix bootstrap program is the relationship between the modulus of an $S$-matrix element and its phase. Unitarity relates them by an integral equation. Even in the simplest case of elastic scattering, this integral equation cannot be solved analytically and numerical approaches are required. We apply modern machine learning techniques to studying the unitarity constraint. We find that for a given modulus, when a phase exists it can generally be reconstructed to good accuracy with machine learning. Moreover, the loss of the reconstruction algorithm provides a good proxy for whether a given modulus can be consistent with unitarity at all. In addition, we study the question of whether multiple phases can be consistent with a single modulus, finding novel phase-ambiguous solutions. In particular, we find a new phase-ambiguous solution which pushes the known limit on such solutions significantly beyond the previous bound.
id cern-2868109
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
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spelling cern-28681092023-10-03T15:52:37Zhttp://cds.cern.ch/record/2868109engDersy, AurélienSchwartz, Matthew D.Zhiboedov, AlexanderReconstructing $S$-matrix Phases with Machine Learninghep-phParticle Physics - Phenomenologycs.LGComputing and Computershep-thParticle Physics - TheoryAn important element of the $S$-matrix bootstrap program is the relationship between the modulus of an $S$-matrix element and its phase. Unitarity relates them by an integral equation. Even in the simplest case of elastic scattering, this integral equation cannot be solved analytically and numerical approaches are required. We apply modern machine learning techniques to studying the unitarity constraint. We find that for a given modulus, when a phase exists it can generally be reconstructed to good accuracy with machine learning. Moreover, the loss of the reconstruction algorithm provides a good proxy for whether a given modulus can be consistent with unitarity at all. In addition, we study the question of whether multiple phases can be consistent with a single modulus, finding novel phase-ambiguous solutions. In particular, we find a new phase-ambiguous solution which pushes the known limit on such solutions significantly beyond the previous bound.arXiv:2308.09451CERN-TH-2023-161oai:cds.cern.ch:28681092023-08-18
spellingShingle hep-ph
Particle Physics - Phenomenology
cs.LG
Computing and Computers
hep-th
Particle Physics - Theory
Dersy, Aurélien
Schwartz, Matthew D.
Zhiboedov, Alexander
Reconstructing $S$-matrix Phases with Machine Learning
title Reconstructing $S$-matrix Phases with Machine Learning
title_full Reconstructing $S$-matrix Phases with Machine Learning
title_fullStr Reconstructing $S$-matrix Phases with Machine Learning
title_full_unstemmed Reconstructing $S$-matrix Phases with Machine Learning
title_short Reconstructing $S$-matrix Phases with Machine Learning
title_sort reconstructing $s$-matrix phases with machine learning
topic hep-ph
Particle Physics - Phenomenology
cs.LG
Computing and Computers
hep-th
Particle Physics - Theory
url http://cds.cern.ch/record/2868109
work_keys_str_mv AT dersyaurelien reconstructingsmatrixphaseswithmachinelearning
AT schwartzmatthewd reconstructingsmatrixphaseswithmachinelearning
AT zhiboedovalexander reconstructingsmatrixphaseswithmachinelearning