Matrix product state pre-training for quantum machine learning

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Abstract

Hybrid quantum-classical algorithms are a promising candidate for developing uses for NISQ devices. In particular, parametrised quantum circuits (PQCs) paired with classical optimizers have been used as a basis for quantum chemistry and quantum optimization problems. Tensor network methods are being increasingly used as a classical machine learning tool, as well as a tool for studying quantum systems. We introduce a circuit pre-training method based on matrix product state machine learning methods, and demonstrate that it accelerates training of PQCs for both supervised learning, energy minimization, and combinatorial optimization.

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Dborin, J., Barratt, F., Wimalaweera, V., Wright, L., & Green, A. G. (2022). Matrix product state pre-training for quantum machine learning. Quantum Science and Technology, 7(3). https://doi.org/10.1088/2058-9565/ac7073

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