Trade-off between gradient measurement efficiency and expressivity in deep quantum neural networks

IF 6.6 1区 物理与天体物理 Q1 PHYSICS, APPLIED
Koki Chinzei, Shinichiro Yamano, Quoc Hoan Tran, Yasuhiro Endo, Hirotaka Oshima
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Abstract

Quantum neural networks (QNNs) require an efficient training algorithm to achieve practical quantum advantages. A promising approach is gradient-based optimization, where gradients are estimated by quantum measurements. However, QNNs currently lack general quantum algorithms for efficiently measuring gradients, which limits their scalability. To elucidate the fundamental limits and potentials of efficient gradient estimation, we rigorously prove a trade-off between gradient measurement efficiency (the mean number of simultaneously measurable gradient components) and expressivity in deep QNNs. This trade-off indicates that more expressive QNNs require higher measurement costs per parameter for gradient estimation, while reducing QNN expressivity to suit a given task can increase gradient measurement efficiency. We further propose a general QNN ansatz called the stabilizer-logical product ansatz (SLPA), which achieves the trade-off upper bound by exploiting the symmetric structure of the quantum circuit. Numerical experiments show that the SLPA drastically reduces the sample complexity needed for training while maintaining accuracy and trainability compared to well-designed circuits based on the parameter-shift method.

Abstract Image

深度量子神经网络中梯度测量效率与表达性的权衡
量子神经网络(QNNs)需要一种有效的训练算法来实现实际的量子优势。一种有前途的方法是基于梯度的优化,其中梯度是通过量子测量来估计的。然而,量子神经网络目前缺乏有效测量梯度的通用量子算法,这限制了它们的可扩展性。为了阐明有效梯度估计的基本限制和潜力,我们严格证明了深度qnn中梯度测量效率(同时可测量的梯度分量的平均数量)和表达性之间的权衡。这种权衡表明,更具表现力的QNN在梯度估计中需要更高的每个参数的测量成本,而降低QNN的表达能力以适应给定的任务可以提高梯度测量效率。我们进一步提出了一种通用的QNN分析,称为稳定-逻辑积分析(SLPA),它利用量子电路的对称结构来实现权衡上界。数值实验表明,与基于参数移位方法的设计良好的电路相比,SLPA大幅度降低了训练所需的样本复杂度,同时保持了精度和可训练性。
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来源期刊
npj Quantum Information
npj Quantum Information Computer Science-Computer Science (miscellaneous)
CiteScore
13.70
自引率
3.90%
发文量
130
审稿时长
29 weeks
期刊介绍: The scope of npj Quantum Information spans across all relevant disciplines, fields, approaches and levels and so considers outstanding work ranging from fundamental research to applications and technologies.
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