Barren plateaus in quantum neural network training landscapes 论文

2018Nature Communications引用 2040顶会
Quantum Computing Algorithms and ArchitectureQuantum Information and CryptographyStochastic Gradient Optimization Techniques

详细信息

发表期刊/会议
Nature Communications
发表日期
2018-11-12
发表年份
2018

关键词

Quantum Computing Algorithms and ArchitectureQuantum Information and CryptographyStochastic Gradient Optimization Techniques

摘要

Many experimental proposals for noisy intermediate scale quantum devices involve training a parameterized quantum circuit with a classical optimization loop. Such hybrid quantum-classical algorithms are popular for applications in quantum simulation, optimization, and machine learning. Due to its simplicity and hardware efficiency, random circuits are often proposed as initial guesses for exploring the space of quantum states. We show that the exponential dimension of Hilbert space and the gradient estimation complexity make this choice unsuitable for hybrid quantum-classical algorithms run on more than a few qubits. Specifically, we show that for a wide class of reasonable parameterized quantum circuits, the probability that the gradient along any reasonable direction is non-zero to some fixed precision is exponentially small as a function of the number of qubits. We argue that this is related to the 2-design characteristic of random circuits, and that solutions to this problem must be studied.