系统文献综述:量子机器学习及其应用

IF 13.3 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Computer Science Review Pub Date : 2024-02-01 DOI:10.1016/j.cosrev.2024.100619
David Peral-García , Juan Cruz-Benito , Francisco José García-Peñalvo
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引用次数: 0

摘要

量子物理学改变了我们认识环境的方式,其分支之一量子力学已经证明了精确一致的理论结果。量子计算是利用量子力学进行计算的过程。该领域研究某些亚原子粒子(光子、电子等)的量子行为,以便随后用于执行计算以及大规模信息处理。这些优势是通过使用纠缠或叠加等量子特性实现的。这些功能可以使量子计算机在计算时间和成本方面比经典计算机更具优势。如今,由于计算复杂性(比可观测宇宙中的原子还要多的字节)或所需时间(数千年),经典计算不可能完成的科学挑战,量子计算是唯一已知的答案。然而,目前的量子设备还不具备实现这些目标所需的量子比特和容错能力。尽管如此,在机器学习、金融或化学等其他领域,量子计算在当前的量子设备上仍有用武之地。本手稿旨在对 2017 年至 2023 年间发表的文献进行综述,对量子机器学习中使用的不同类型算法及其应用进行识别、分析和分类。研究方法遵循系统文献综述方法的相关准则,例如 Kitchenham 和其他作者在软件工程领域提出的方法。因此,本研究确定了 94 篇使用量子机器学习技术和算法的文章,并展示了它们使用计算量子电路或反演的实现情况。所发现算法的主要类型是经典机器学习算法(如支持向量机或 k 近邻模型)和经典深度学习算法(如量子神经网络)的量子实现。机器学习领域最相关的应用之一是图像分类。许多文章,尤其是分类方面的文章,都试图利用量子设备和算法来解决目前由经典机器学习解决的问题。尽管取得了令人鼓舞的成果,但量子机器学习还远未充分发挥其潜力。由于现有的量子计算机在质量、速度和规模上都不足以让量子计算充分发挥潜力,因此需要改进量子硬件才能实现这一潜力。
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Systematic literature review: Quantum machine learning and its applications

Quantum physics has changed the way we understand our environment, and one of its branches, quantum mechanics, has demonstrated accurate and consistent theoretical results. Quantum computing is the process of performing calculations using quantum mechanics. This field studies the quantum behavior of certain subatomic particles (photons, electrons, etc.) for subsequent use in performing calculations, as well as for large-scale information processing. These advantages are achieved through the use of quantum features, such as entanglement or superposition. These capabilities can give quantum computers an advantage in terms of computational time and cost over classical computers. Nowadays, scientific challenges are impossible to perform by classical computation due to computational complexity (more bytes than atoms in the observable universe) or the time it would take (thousands of years), and quantum computation is the only known answer. However, current quantum devices do not have yet the necessary qubits and are not fault-tolerant enough to achieve these goals. Nonetheless, there are other fields like machine learning, finance, or chemistry where quantum computation could be useful with current quantum devices. This manuscript aims to present a review of the literature published between 2017 and 2023 to identify, analyze, and classify the different types of algorithms used in quantum machine learning and their applications. The methodology follows the guidelines related to Systematic Literature Review methods, such as the one proposed by Kitchenham and other authors in the software engineering field. Consequently, this study identified 94 articles that used quantum machine learning techniques and algorithms and shows their implementation using computational quantum circuits or ansatzs. 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. One of the most relevant applications in the machine learning field is image classification. Many articles, especially within the classification, 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 quantum hardware is required for this potential to be achieved since the existing quantum computers lack enough quality, speed, and scale to allow quantum computing to achieve its full potential.

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来源期刊
Computer Science Review
Computer Science Review Computer Science-General Computer Science
CiteScore
32.70
自引率
0.00%
发文量
26
审稿时长
51 days
期刊介绍: Computer Science Review, a publication dedicated to research surveys and expository overviews of open problems in computer science, targets a broad audience within the field seeking comprehensive insights into the latest developments. The journal welcomes articles from various fields as long as their content impacts the advancement of computer science. In particular, articles that review the application of well-known Computer Science methods to other areas are in scope only if these articles advance the fundamental understanding of those methods.
期刊最新文献
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