用参数化量子电路中的主动路径解读变分量子模型

Kyungmin Lee, Hyungjun Jeon, Dongkyu Lee, Bongsang Kim, Jeongho Bang, Taehyun Kim
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摘要

基于参数化量子电路(PQC)的变量子机器学习(VQML)模型有望为机器学习应用提供潜在的量子优势。然而,由于 VQML 模型缺乏可解释性,因此很难将 VQML 模型与经典模型进行比较。在本研究中,我们引入了一种图形方法来分析 PQC 和 VQML 模型的相应操作,以解决这一问题。特别是,我们利用量子态的斯托克斯表示法,将 VQML 模型视为基于基本门的相应表示法的网络模型。从这种方法出发,我们提出了网络中活动路径的概念,并将 VQML 模型的表现力与之联系起来。我们研究了 VQML 模型中活动路径的增长,发现在某些情况下 VQML 模型的表达能力会受到很大限制。然后,我们从 VQML 模型的图形解释中得到启发,构建了经典模型,并证明这些模型在这些情况下可以模拟或优于 VQML 模型的输出。我们的成果为解释 VQML 模型的运行提供了一种新方法,并促进了量子和经典机器学习领域的相互联系。
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Interpreting Variational Quantum Models with Active Paths in Parameterized Quantum Circuits
Variational quantum machine learning (VQML) models based on parameterized quantum circuits (PQC) have been expected to offer a potential quantum advantage for machine learning applications. However, comparison between VQML models and their classical counterparts is hard due to the lack of interpretability of VQML models. In this study, we introduce a graphical approach to analyze the PQC and the corresponding operation of VQML models to deal with this problem. In particular, we utilize the Stokes representation of quantum states to treat VQML models as network models based on the corresponding representations of basic gates. From this approach, we suggest the notion of active paths in the networks and relate the expressivity of VQML models with it. We investigate the growth of active paths in VQML models and observe that the expressivity of VQML models can be significantly limited for certain cases. Then we construct classical models inspired by our graphical interpretation of VQML models and show that they can emulate or outperform the outputs of VQML models for these cases. Our result provides a new way to interpret the operation of VQML models and facilitates the interconnection between quantum and classical machine learning areas.
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