论文标题
时间序列的量子储层计算弱和投影测量
Time Series Quantum Reservoir Computing with Weak and Projective Measurements
论文作者
论文摘要
量子机器学习代表了数据处理的有前途的途径,也代表了顺序数据分析的目的,正如最近在量子储层计算(QRC)中提出的那样。在多个平台和噪声中间尺度量子设备上操作的可能性使QRC成为及时的主题。但是,尚未解决的挑战是如何有效地将量子测量在现实协议中包括在现实方案中,同时保留了顺序时间序列处理所需的储层内存并保留大型希尔伯特空间所提供的量子优势。在这项工作中,我们提出了不同的测量方案,并通过理论预测和数值分析来评估其在资源方面的效率。我们表明,有可能利用储层的量子性,并通过两个成功的测量协议获得记忆和预测任务的理想性能。一个是在储层的褪色内存和存储输入序列的相应数据所确定的动力学的一部分中,而另一个则采用在在线运行的弱测量结果,在权衡中可以准确提取信息,而无需阻碍所需的内存。我们的工作确立了有效协议的条件,成为褪色的内存时间是关键因素,并证明了使用量子系统进行真正的在线时间序列处理的可能性。
Quantum machine learning represents a promising avenue for data processing, also for purposes of sequential temporal data analysis, as recently proposed in quantum reservoir computing (QRC). The possibility to operate on several platforms and noise intermediate-scale quantum devices makes QRC a timely topic. A challenge that has not been addressed yet, however, is how to efficiently include quantum measurement in realistic protocols, while retaining the reservoir memory needed for sequential time series processing and preserving the quantum advantage offered by large Hilbert spaces. In this work, we propose different measurement protocols and assess their efficiency in terms of resources, through theoretical predictions and numerical analysis. We show that it is possible to exploit the quantumness of the reservoir and to obtain ideal performance both for memory and forecasting tasks with two successful measurement protocols. One consists in rewinding part of the dynamics determined by the fading memory of the reservoir and storing the corresponding data of the input sequence, while the other employs weak measurements operating online at the trade-off where information can be extracted accurately and without hindering the needed memory. Our work establishes the conditions for efficient protocols, being the fading memory time a key factor, and demonstrates the possibility of performing genuine online time-series processing with quantum systems.