分类任务的量子机器学习核训练基准测试

Diego Alvarez-Estevez
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引用次数: 0

摘要

量子增强机器学习是一个快速发展的领域,旨在利用量子力学的独特特性来增强经典机器学习。然而,这些方法的实际适用性仍然是一个悬而未决的问题,特别是在特别制作的玩具问题的背景下,并且考虑到当前量子硬件的局限性。本研究的重点是分类任务背景下的量子核方法。特别地,它研究了量子核估计和量子核训练(QKT)与两个量子特征映射(即ZZFeatureMap和CovariantFeatureMap)的性能。值得注意的是,这些特征映射是在可能的近期量子优势的假设下在文献中提出的,并且在特定数据集中显示出有希望的性能。本研究旨在评估其通用性和泛化能力在更一般的基准,包括人工和建立的参考数据集。经典的机器学习方法,特别是支持向量机和逻辑回归,也被纳入基线比较。实验结果表明,量子方法在不同的数据集上表现出不同的性能。尽管在特殊数据集中优于经典方法,但在标准经典基准的一般情况下获得了混合结果。实验数据对应用QKT优化的一般附加价值提出了质疑,因为额外的计算成本并不一定转化为改进的分类性能。相反,建议仔细选择与适当的超参数化相关的量子特征映射可能会证明更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Benchmarking Quantum Machine Learning Kernel Training for Classification Tasks
Quantum-enhanced machine learning is a rapidly evolving field that aims to leverage the unique properties of quantum mechanics to enhance classical machine learning. However, the practical applicability of these methods remains an open question, particularly beyond the context of specifically crafted toy problems, and given the current limitations of quantum hardware. This study focuses on quantum kernel methods in the context of classification tasks. In particular, it examines the performance of quantum kernel estimation and quantum kernel training (QKT) in connection with two quantum feature mappings, namely, ZZFeatureMap and CovariantFeatureMap. Remarkably, these feature maps have been proposed in the literature under the conjecture of possible near-term quantum advantage and have shown promising performance in ad hoc datasets. This study aims to evaluate their versatility and generalization capabilities in a more general benchmark, encompassing both artificial and established reference datasets. Classical machine learning methods, specifically support vector machines and logistic regression, are also incorporated as baseline comparisons. Experimental results indicate that quantum methods exhibit varying performance across different datasets. Despite outperforming classical methods in ad hoc datasets, mixed results are obtained for the general case among standard classical benchmarks. The experimental data call into question a general added value of applying QKT optimization, for which the additional computational cost does not necessarily translate into improved classification performance. Instead, it is suggested that a careful choice of the quantum feature map in connection with proper hyperparameterization may prove more effective.
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