Cost Function Dependent Barren Plateaus in Shallow Parametrized Quantum Circuits

Variational quantum algorithms (VQAs) optimize the parameters of a parametrized quantum circuit to minimize a cost function . While VQAs may enable practical applications of noisy quantum computers, they are nevertheless heuristic methods with unproven scaling. Here, we rigorously prove two results, assuming is an alternating layered ansatz composed of blocks forming local 2-designs. Our first result states that defining in terms of global observables leads to exponentially vanishing gradients (i.e., barren plateaus) even when is shallow. Hence, several VQAs in the literature must revise their proposed costs. On the other hand, our second result states that defining with local observables leads to at worst a polynomially vanishing gradient, so long as the depth of is . Our results establish a connection between locality and trainability. We illustrate these ideas with large-scale simulations, up to 100 qubits, of a quantum autoencoder implementation.
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