论文标题
系统文献评论:量子机学习及其应用
Systematic Literature Review: Quantum Machine Learning and its applications
论文作者
论文摘要
量子计算是使用量子力学进行计算的过程。该领域研究了某些亚原子颗粒的量子行为,以随后在执行计算以及大规模信息处理中使用。这些功能可以使量子计算机在计算时间和成本上比古典计算机具有优势。如今,由于计算复杂性或计算所需的时间,经典计算无法执行一些科学挑战,而量子计算是可能的答案之一。但是,当前的量子设备尚未必要的Qubits,并且不足以实现这些目标。尽管如此,还有其他领域,例如机器学习或化学反应,量子计算对于当前量子设备可能很有用。该手稿旨在介绍2017年至2023年之间发表的论文的系统文献综述,以识别,分析和分类量子机学习及其应用中使用的不同算法。因此,这项研究确定了94篇使用量子机学习技术和算法的文章。发现算法的主要类型是经典的机器学习算法的量子实现,例如支持向量机或K-Near-neigr-Neigner模型以及经典的深度学习算法,例如量子神经网络。许多文章试图解决经典机器学习目前回答的问题,但使用量子设备和算法来解决。尽管结果是有希望的,但量子机学习远非实现其全部潜力。由于现有的量子计算机缺乏足够的质量,速度和比例,因此需要改进量子硬件,从而允许量子计算实现其全部潜力。
Quantum computing is the process of performing calculations using quantum mechanics. This field studies the quantum behavior of certain subatomic particles for subsequent use in performing calculations, as well as for large-scale information processing. These capabilities can give quantum computers an advantage in terms of computational time and cost over classical computers. Nowadays, there are scientific challenges that are impossible to perform by classical computation due to computational complexity or the time the calculation would take, and quantum computation is one of the possible answers. However, current quantum devices have not yet the necessary qubits and are not fault-tolerant enough to achieve these goals. Nonetheless, there are other fields like machine learning or chemistry where quantum computation could be useful with current quantum devices. This manuscript aims to present a Systematic Literature Review of the papers published between 2017 and 2023 to identify, analyze and classify the different algorithms used in quantum machine learning and their applications. Consequently, this study identified 94 articles that used quantum machine learning techniques and algorithms. The main types of found algorithms are quantum implementations of classical machine learning algorithms, such as support vector machines or the k-nearest neighbor model, and classical deep learning algorithms, like quantum neural networks. Many articles try to solve problems currently answered by classical machine learning but using quantum devices and algorithms. Even though results are promising, quantum machine learning is far from achieving its full potential. An improvement in the quantum hardware is required since the existing quantum computers lack enough quality, speed, and scale to allow quantum computing to achieve its full potential.