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.
CITATION STYLE
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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