A Novel Stochastic LSTM Model Inspired by Quantum Machine Learning

Lindsay, Joseph, Zand, Ramtin
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Abstract

Works in quantum machine learning (QML) over the past few years indicate that QML algorithms can function just as well as their classical counterparts, and even outperform them in some cases. Among the corpus of recent work, many current QML models take advantage of variational quantum algorithm (VQA) circuits, given that their scale is typically small enough to be compatible with NISQ devices and the method of automatic differentiation for optimizing circuit parameters is familiar to machine learning (ML). While the results bear interesting promise for an era when quantum machines are more readily accessible, if one can achieve similar results through non-quantum methods then there may be a more near-term advantage available to practitioners. To this end, the nature of this work is to investigate the utilization of stochastic methods inspired by a variational quantum version of the long short-term memory (LSTM) model in an attempt to approach the reported successes in performance and rapid convergence. By analyzing the performance of classical, stochastic, and quantum methods, this work aims to elucidate if it is possible to achieve some of QML's major reported benefits on classical machines by incorporating aspects of its stochasticity.
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基于量子机器学习的随机LSTM模型
过去几年在量子机器学习(QML)领域的研究表明,QML算法可以像经典算法一样发挥作用,在某些情况下甚至比经典算法表现得更好。在最近的研究中,许多当前的QML模型都利用了变分量子算法(VQA)电路,因为它们的规模通常足够小,可以与NISQ设备兼容,而且用于优化电路参数的自动微分方法与机器学习(ML)很熟悉。虽然这些结果在量子机器更容易使用的时代带来了有趣的前景,但如果可以通过非量子方法获得类似的结果,那么从业者可能会获得更多的短期优势。为此,这项工作的本质是研究受长短期记忆(LSTM)模型的变分量子版本启发的随机方法的利用,试图在性能和快速收敛方面接近报道的成功。通过分析经典、随机和量子方法的性能,本工作旨在阐明是否有可能通过结合其随机性方面在经典机器上实现QML的一些主要优点。
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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