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Neural network quantum state tomography in a two-qubit experiment

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arxiv 2007.16185 v3 pith:HECTUS5Q submitted 2020-07-31 quant-ph

Neural network quantum state tomography in a two-qubit experiment

classification quant-ph
keywords statesdataquantumexperimentlearningmethodsstateexperimental
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We study the performance of efficient quantum state tomography methods based on neural network quantum states using measured data from a two-photon experiment. Machine learning inspired variational methods provide a promising route towards scalable state characterization for quantum simulators. While the power of these methods has been demonstrated on synthetic data, applications to real experimental data remain scarce. We benchmark and compare several such approaches by applying them to measured data from an experiment producing two-qubit entangled states. We find that in the presence of experimental imperfections and noise, confining the variational manifold to physical states, i.e. to positive semi-definite density matrices, greatly improves the quality of the reconstructed states but renders the learning procedure more demanding. Including additional, possibly unjustified, constraints, such as assuming pure states, facilitates learning, but also biases the estimator.

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    quant-ph 2025-07 unverdicted novelty 6.0

    A variational quantum circuit trained solely on classical measurement outcomes reconstructs diverse quantum states including GHZ, spin-chain ground states, and random circuits with fidelities above 90% on simulators a...