Why bigger quantum neural networks do better

NATURE COMPUTATIONAL SCIENCE(2023)

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摘要
Increasing the number of parameters in a quantum neural network leads to a computational 'phase transition', beyond which training the network becomes significantly easier. An algebraic theory has been developed for this overparametrization phenomenon and predicts its onset above a certain parameter threshold.
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