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Multi-variable integration with a variational quantum circuit

In this work we present a novel strategy to evaluate multi-variable integrals with quantum circuits. The procedure first encodes the integration variables into a parametric circuit. The obtained circuit is then derived with respect to the integration variables using the parameter shift rule techniqu...

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Detalles Bibliográficos
Autores principales: Cruz-Martinez, Juan M., Robbiati, Matteo, Carrazza, Stefano
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2867435
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author Cruz-Martinez, Juan M.
Robbiati, Matteo
Carrazza, Stefano
author_facet Cruz-Martinez, Juan M.
Robbiati, Matteo
Carrazza, Stefano
author_sort Cruz-Martinez, Juan M.
collection CERN
description In this work we present a novel strategy to evaluate multi-variable integrals with quantum circuits. The procedure first encodes the integration variables into a parametric circuit. The obtained circuit is then derived with respect to the integration variables using the parameter shift rule technique. The observable representing the derivative is then used as the predictor of the target integrand function following a quantum machine learning approach. The integral is then estimated using the fundamental theorem of integral calculus by evaluating the original circuit. Embedding data according to a reuploading strategy, multi-dimensional variables can be easily encoded into the circuit's gates and then individually taken as targets while deriving the circuit. These techniques can be exploited to partially integrate a function or to quickly compute parametric integrands within the training hyperspace.
id cern-2867435
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
record_format invenio
spelling cern-28674352023-10-15T06:23:54Zhttp://cds.cern.ch/record/2867435engCruz-Martinez, Juan M.Robbiati, MatteoCarrazza, StefanoMulti-variable integration with a variational quantum circuitquant-phGeneral Theoretical PhysicsIn this work we present a novel strategy to evaluate multi-variable integrals with quantum circuits. The procedure first encodes the integration variables into a parametric circuit. The obtained circuit is then derived with respect to the integration variables using the parameter shift rule technique. The observable representing the derivative is then used as the predictor of the target integrand function following a quantum machine learning approach. The integral is then estimated using the fundamental theorem of integral calculus by evaluating the original circuit. Embedding data according to a reuploading strategy, multi-dimensional variables can be easily encoded into the circuit's gates and then individually taken as targets while deriving the circuit. These techniques can be exploited to partially integrate a function or to quickly compute parametric integrands within the training hyperspace.arXiv:2308.05657TIF-UNIMI-2023-13CERN-TH-2023-157oai:cds.cern.ch:28674352023-08-10
spellingShingle quant-ph
General Theoretical Physics
Cruz-Martinez, Juan M.
Robbiati, Matteo
Carrazza, Stefano
Multi-variable integration with a variational quantum circuit
title Multi-variable integration with a variational quantum circuit
title_full Multi-variable integration with a variational quantum circuit
title_fullStr Multi-variable integration with a variational quantum circuit
title_full_unstemmed Multi-variable integration with a variational quantum circuit
title_short Multi-variable integration with a variational quantum circuit
title_sort multi-variable integration with a variational quantum circuit
topic quant-ph
General Theoretical Physics
url http://cds.cern.ch/record/2867435
work_keys_str_mv AT cruzmartinezjuanm multivariableintegrationwithavariationalquantumcircuit
AT robbiatimatteo multivariableintegrationwithavariationalquantumcircuit
AT carrazzastefano multivariableintegrationwithavariationalquantumcircuit