参数化量子电路的分析:论量子门的可表达性与类型的关系

IF 4.6
Yu Liu;Kazuya Kaneko;Kentaro Baba;Jumpei Koyama;Koichi Kimura;Naoyuki Takeda
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引用次数: 0

摘要

可表达性是参数化量子电路的关键因素。在基于变分量子算法的量子机器学习(QML)中,由高度可表达的PQC和足够数量的量子比特组成的QML模型理论上能够逼近任意连续函数。虽然有很多研究探讨了可表达性与学习绩效的关系,以及PQC的层数,但可表达性与PQC结构之间的关系相对较少受到关注。在本文中,我们使用梯度增强树模型和Shapley加性解释值分析了pqc中可表达性与量子门类型之间的联系。我们对来自19个PQC拓扑的1615个PQC实例进行了分析,每个PQC实例具有2-18个量子位和1-5层。我们的分析结果为设计高度可表达的pqc提供了指导,建议集成更多的x旋转或y旋转门,同时保持与can门数量的谨慎平衡。此外,我们的评估提供了可表达性饱和的额外证据,正如以前的研究所观察到的那样。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Parameterized Quantum Circuits: On the Connection Between Expressibility and Types of Quantum Gates
Expressibility is a crucial factor of a parameterized quantum circuit (PQC). In the context of variational-quantum-algorithm-based quantum machine learning (QML), a QML model composed of a highly expressible PQC and a sufficient number of qubits is theoretically capable of approximating any arbitrary continuous function. While much research has explored the relationship between expressibility and learning performance, as well as the number of layers in PQCs, the connection between expressibility and PQC structure has received comparatively less attention. In this article, we analyze the connection between expressibility and the types of quantum gates within PQCs using a gradient boosting tree model and Shapley additive explanations values. Our analysis is performed on 1615 instances of PQC derived from 19 PQC topologies, each with 2–18 qubits and 1–5 layers. The findings of our analysis provide guidance for designing highly expressible PQCs, suggesting the integration of more X-rotation or Y-rotation gates while maintaining a careful balance with the number of cnot gates . Furthermore, our evaluation offers an additional evidence of expressibility saturation, as observed by previous studies.
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