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arxiv: 1811.06654 · v2 · pith:MDRJQ6B2new · submitted 2018-11-16 · 🪐 quant-ph · cs.AI

Neural network state estimation for full quantum state tomography

classification 🪐 quant-ph cs.AI
keywords stateestimationquantumfullnetworkneuraltomographyefficient
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An efficient state estimation model, neural network estimation (NNE), empowered by machine learning techniques, is presented for full quantum state tomography (FQST). A parameterized function based on neural network is applied to map the measurement outcomes to the estimated quantum states. Parameters are updated with supervised learning procedures. From the computational complexity perspective our algorithm is the most efficient one among existing state estimation algorithms for full quantum state tomography. We perform numerical tests to prove both the accuracy and scalability of our model.

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    Neural networks trained via supervised learning on simulated noisy measurements can mitigate unknown noise in quantum state tomography for pure and mixed states.