Identifying nonclassicality from experimental data using artificial neural networks
The fast and accessible verification of nonclassical resources is an indispensable step towards a broad utilization of continuous-variable quantum technologies. Here, we use machine learning methods for the identification of nonclassicality of quantum states of light by processing experimental data...
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creator | Gebhart, Valentin Bohmann, Martin Weiher, Karsten Biagi, Nicola Zavatta, Alessandro Bellini, Marco Agudelo, Elizabeth |
description | The fast and accessible verification of nonclassical resources is an indispensable step towards a broad utilization of continuous-variable quantum technologies. Here, we use machine learning methods for the identification of nonclassicality of quantum states of light by processing experimental data obtained via homodyne detection. For this purpose, we train an artificial neural network to classify classical and nonclassical states from their quadrature-measurement distributions. We demonstrate that the network is able to correctly identify classical and nonclassical features from real experimental quadrature data for different states of light. Furthermore, we show that nonclassicality of some states that were not used in the training phase is also recognized. Circumventing the requirement of the large sample sizes needed to perform homodyne tomography, our approach presents a promising alternative for the identification of nonclassicality for small sample sizes, indicating applicability for fast sorting or direct monitoring of experimental data. |
doi_str_mv | 10.48550/arxiv.2101.07112 |
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subjects | Artificial neural networks Continuity (mathematics) Machine learning Neural networks Physics - Quantum Physics Quadratures |
title | Identifying nonclassicality from experimental data using artificial neural networks |
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