Escaping from the Barren Plateau via Gaussian Initializations in Deep Variational Quantum Circuits

Part of Advances in Neural Information Processing Systems 35 (NeurIPS 2022) Main Conference Track

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Authors

Kaining Zhang, Liu Liu, Min-Hsiu Hsieh, Dacheng Tao

Abstract

Variational quantum circuits have been widely employed in quantum simulation and quantum machine learning in recent years. However, quantum circuits with random structures have poor trainability due to the exponentially vanishing gradient with respect to the circuit depth and the qubit number. This result leads to a general standpoint that deep quantum circuits would not be feasible for practical tasks. In this work, we propose an initialization strategy with theoretical guarantees for the vanishing gradient problem in general deep quantum circuits. Specifically, we prove that under proper Gaussian initialized parameters, the norm of the gradient decays at most polynomially when the qubit number and the circuit depth increase. Our theoretical results hold for both the local and the global observable cases, where the latter was believed to have vanishing gradients even for very shallow circuits. Experimental results verify our theoretical findings in quantum simulation and quantum chemistry.