论文标题
具有随机傅立叶特征的经典近似量子机学习
Classically Approximating Variational Quantum Machine Learning with Random Fourier Features
论文作者
论文摘要
近期量子计算的许多应用都取决于变分量子电路(VQC)。它们已被展示为具有当前嘈杂的中间尺度量子计算机(NISQ)的机器学习中量子优势的有前途的模型。人们通常认为,VQC的力量依赖于它们的大型特征空间,并且广泛的作品探讨了VQC在这方面的表现力和训练性。在我们的工作中,我们提出了一种经典的抽样方法,该方法可能仅鉴于其体系结构的描述,可能与Hamiltonian编码紧密接近VQC。它使用随机傅立叶特征(RFF)的开创性建议,并且可以将VQC视为大型傅立叶系列。我们通过采样几个频率来构建等效的低维核,为从指数性的大量子特征空间构建的经典近似模型提供一般的理论界限,我们实验表明,这种近似值对于多种编码策略有效。确切地说,我们表明所需样品的数量随量子光谱的大小增长而增长。因此,该工具在许多情况下质疑VQC对量子优势的希望,但相反,有助于缩小其潜在成功的条件。我们期望具有各种编码的哈密顿量或具有较大输入维度的VQC对经典近似变得更加健壮。
Many applications of quantum computing in the near term rely on variational quantum circuits (VQCs). They have been showcased as a promising model for reaching a quantum advantage in machine learning with current noisy intermediate scale quantum computers (NISQ). It is often believed that the power of VQCs relies on their exponentially large feature space, and extensive works have explored the expressiveness and trainability of VQCs in that regard. In our work, we propose a classical sampling method that may closely approximate a VQC with Hamiltonian encoding, given only the description of its architecture. It uses the seminal proposal of Random Fourier Features (RFF) and the fact that VQCs can be seen as large Fourier series. We provide general theoretical bounds for classically approximating models built from exponentially large quantum feature space by sampling a few frequencies to build an equivalent low dimensional kernel, and we show experimentally that this approximation is efficient for several encoding strategies. Precisely, we show that the number of required samples grows favorably with the size of the quantum spectrum. This tool therefore questions the hope for quantum advantage from VQCs in many cases, but conversely helps to narrow the conditions for their potential success. We expect VQCs with various and complex encoding Hamiltonians, or with large input dimension, to become more robust to classical approximations.