Learning Robust Observable to Address Noise in Quantum Machine Learning

Bikram Khanal, Pablo Rivas
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Abstract

Quantum Machine Learning (QML) has emerged as a promising field that combines the power of quantum computing with the principles of machine learning. One of the significant challenges in QML is dealing with noise in quantum systems, especially in the Noisy Intermediate-Scale Quantum (NISQ) era. Noise in quantum systems can introduce errors in quantum computations and degrade the performance of quantum algorithms. In this paper, we propose a framework for learning observables that are robust against noisy channels in quantum systems. We demonstrate that it is possible to learn observables that remain invariant under the effects of noise and show that this can be achieved through a machine-learning approach. We present a toy example using a Bell state under a depolarization channel to illustrate the concept of robust observables. We then describe a machine-learning framework for learning such observables across six two-qubit quantum circuits and five noisy channels. Our results show that it is possible to learn observables that are more robust to noise than conventional observables. We discuss the implications of this finding for quantum machine learning, including potential applications in enhancing the stability of QML models in noisy environments. By developing techniques for learning robust observables, we can improve the performance and reliability of quantum machine learning models in the presence of noise, contributing to the advancement of practical QML applications in the NISQ era.
在量子机器学习中学习鲁棒可观测数据以解决噪声问题
量子机器学习(QML)是量子计算能力与机器学习原理相结合的一个前景广阔的领域。量子机器学习的重大挑战之一是处理量子系统中的噪声,尤其是在中量级噪声量子(NISQ)时代。量子系统中的噪声会在量子计算中引入误差,并降低量子算法的性能。在本文中,我们提出了一个框架,用于学习量子系统中对噪声信道具有鲁棒性的可观测量。我们证明了学习在噪声影响下保持不变的可观测量是可能的,并表明这可以通过机器学习方法来实现。我们提出了一个在非极化信道下使用贝尔态的玩具示例,以说明稳健观测指标的概念。然后,我们描述了一个机器学习框架,用于在六个二量子比特量子电路和五个噪声信道中学习这种观测值。我们的结果表明,有可能学习到比传统观测值对噪声更稳健的观测值。我们讨论了这一发现对量子机器学习的影响,包括增强 QML 模型在噪声环境中稳定性的潜在应用。通过开发学习鲁棒观测值的技术,我们可以提高量子机器学习模型在噪声环境下的性能和可靠性,从而推动量子机器学习在 NISQ 时代的实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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