论文标题

量子极端学习机的潜力和局限性

Potential and limitations of quantum extreme learning machines

论文作者

Innocenti, Luca, Lorenzo, Salvatore, Palmisano, Ivan, Ferraro, Alessandro, Paternostro, Mauro, Palma, G. Massimo

论文摘要

量子储层计算机(QRC)和量子极端学习机(QELM)旨在有效地后处理固定的结果(通常未校准)量子设备,以求解诸如量子状态属性之类的任务。目前缺乏的潜在和局限性的表征将使这样的方法完全部署系统识别问题,设备性能优化以及状态或过程重建。我们提出了一个模拟QRC和QELM的框架,表明它们可以通过单个有效测量来简洁地描述,并提供明确的表征通过此类协议可检索的信息。此外,我们发现QELM的训练过程与重建表征给定设备的有效测量的训练过程之间的类比。我们的分析铺平了对Qelm和QRC的能力和局限性的更透彻理解的方式,并且有可能成为量子状态估计的强大测量范式,该量子估计更适合噪声和缺陷。

Quantum reservoir computers (QRC) and quantum extreme learning machines (QELM) aim to efficiently post-process the outcome of fixed -- generally uncalibrated -- quantum devices to solve tasks such as the estimation of the properties of quantum states. The characterisation of their potential and limitations, which is currently lacking, will enable the full deployment of such approaches to problems of system identification, device performance optimization, and state or process reconstruction. We present a framework to model QRCs and QELMs, showing that they can be concisely described via single effective measurements, and provide an explicit characterisation of the information exactly retrievable with such protocols. We furthermore find a close analogy between the training process of QELMs and that of reconstructing the effective measurement characterising the given device. Our analysis paves the way to a more thorough understanding of the capabilities and limitations of both QELMs and QRCs, and has the potential to become a powerful measurement paradigm for quantum state estimation that is more resilient to noise and imperfections.

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