量子核化二进制分类的二次方提速

IF 4.4 Q1 OPTICS
Jungyun Lee, Daniel K. Park
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引用次数: 0

摘要

分类是数据驱动的预测和决策的核心,是有监督机器学习的一项基本任务。最近,出现了几种量子机器学习算法,它们使用量子核来衡量数据之间的相似性,从而对编码为量子态的数据集进行二元分类。量子核的潜在优势在于量子计算机能够构建比经典计算机更有效的核,从而捕捉数据中的模式或更高效地计算核。然而,现有的基于量子核的分类算法并没有利用量子叠加数据样本的能力来进行额外的增强。这项工作展示了如何通过量子振幅估计(QAE)在量子核化二进制分类器(QKC)中利用这种能力来实现四倍速度提升。此外,还为 QKC 提出了新的量子电路,其中量子比特的数量减少了一个,电路深度与样本数据的数量成线性关系。通过在 Iris 数据集上进行数值模拟,验证了与之前方法相比的四倍速度提升。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Quadratic Speed-ups in Quantum Kernelized Binary Classification

Quadratic Speed-ups in Quantum Kernelized Binary Classification

Classification is at the core of data-driven prediction and decision-making, representing a fundamental task in supervised machine learning. Recently, several quantum machine learning algorithms that use quantum kernels as a measure of similarities between data have emerged to perform binary classification on datasets encoded as quantum states. The potential advantages of quantum kernels arise from the ability of quantum computers to construct kernels that are more effective than their classical counterparts in capturing patterns in data or computing kernels more efficiently. However, existing quantum kernel-based classification algorithms do not harness the capability of having data samples in quantum superposition for additional enhancements. This work demonstrates how such capability can be leveraged in quantum kernelized binary classifiers (QKCs) through Quantum Amplitude Estimation (QAE) for quadratic speed-up. Additionally, new quantum circuits are proposed for the QKCs in which the number of qubits is reduced by one, and the circuit depth is reduced linearly with respect to the number of sample data. The quadratic speed-up over previous methods is verified through numerical simulations on the Iris dataset.

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CiteScore
7.90
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