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Experimental genuine quantum nonlocality in the triangle network

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arxiv 2401.15428 v2 pith:G27HJLLX submitted 2024-01-27 quant-ph

Experimental genuine quantum nonlocality in the triangle network

classification quant-ph
keywords quantumnetworknonlocalitytrianglecorrelationsexperimentallyobtainseveral
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In the last decade, it was understood that quantum networks involving several independent sources of entanglement which are distributed and measured by several parties allowed for completely novel forms of nonclassical quantum correlations, when entangled measurements are performed. Here, we experimentally obtain quantum correlations in a triangle network structure, and provide solid evidence of its nonlocality. Specifically, we first obtain the elegant distribution proposed in (Entropy 21, 325) by performing a six-photon experiment. Then, we justify its nonlocality based on machine learning tools to estimate the distance of the experimentally obtained correlation to the local set, and through the violation of a family of conjectured inequalities tailored for the triangle network.

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Cited by 2 Pith papers

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