Witnessing nonclassical behavior is a crucial ingredient in quantum information processing. For that, one has to optimize the quantum features a given physical setup can give rise to, which is a hard computational task currently tackled with semidefinite programming, a method limited to linear objective functions and that becomes prohibitive as the complexity of the system grows. Here, we propose an alternative strategy, which exploits a feedforward artificial neural network to optimize the correlations compatible with arbitrary quantum networks. A remarkable step forward with respect to existing methods is that it deals with nonlinear optimization constraints and objective functions, being applicable to scenarios featuring independent sources and nonlinear entanglement witnesses. Furthermore, it offers a significant speedup in comparison with other approaches, thus allowing to explore previously inaccessible regimes. We also extend the use of the neural network to the experimental realm, a situation in which the statistics are unavoidably affected by imperfections, retrieving device-independent uncertainty estimates on Bell-like violations obtained with independent sources of entangled photon states. In this way, this work paves the way for the certification of quantum resources in networks of growing size and complexity.

Machine-learning-based device-independent certification of quantum networks / D'Alessandro, Nicola; Polacchi, Beatrice; Moreno, George; Polino, Emanuele; CHAVES SOUTO ARAUJO, Rafael; Agresti, Iris; Sciarrino, Fabio. - In: PHYSICAL REVIEW RESEARCH. - ISSN 2643-1564. - 5:2(2023). [10.1103/PhysRevResearch.5.023016]

Machine-learning-based device-independent certification of quantum networks

Nicola D'Alessandro;Beatrice Polacchi;Emanuele Polino;Rafael Chaves;Iris Agresti
;
Fabio Sciarrino
2023

Abstract

Witnessing nonclassical behavior is a crucial ingredient in quantum information processing. For that, one has to optimize the quantum features a given physical setup can give rise to, which is a hard computational task currently tackled with semidefinite programming, a method limited to linear objective functions and that becomes prohibitive as the complexity of the system grows. Here, we propose an alternative strategy, which exploits a feedforward artificial neural network to optimize the correlations compatible with arbitrary quantum networks. A remarkable step forward with respect to existing methods is that it deals with nonlinear optimization constraints and objective functions, being applicable to scenarios featuring independent sources and nonlinear entanglement witnesses. Furthermore, it offers a significant speedup in comparison with other approaches, thus allowing to explore previously inaccessible regimes. We also extend the use of the neural network to the experimental realm, a situation in which the statistics are unavoidably affected by imperfections, retrieving device-independent uncertainty estimates on Bell-like violations obtained with independent sources of entangled photon states. In this way, this work paves the way for the certification of quantum resources in networks of growing size and complexity.
2023
quantum correlations, quantum information, machine learning
01 Pubblicazione su rivista::01a Articolo in rivista
Machine-learning-based device-independent certification of quantum networks / D'Alessandro, Nicola; Polacchi, Beatrice; Moreno, George; Polino, Emanuele; CHAVES SOUTO ARAUJO, Rafael; Agresti, Iris; Sciarrino, Fabio. - In: PHYSICAL REVIEW RESEARCH. - ISSN 2643-1564. - 5:2(2023). [10.1103/PhysRevResearch.5.023016]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1677755
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