论文标题
监督学习的量子计算方法
Quantum Computing Methods for Supervised Learning
论文作者
论文摘要
在过去的二十年中,量子计算和机器学习的理论和实践都有爆炸性的增长。现代机器学习系统处理大量数据并要求大量的计算能力。随着硅半导体微型化接近其物理限制,越来越多地考虑量子计算来满足这些计算需求。小规模量子计算机和量子退火器已经建造,并且已经在商业上出售。量子计算机可以使所有科学和工程领域的机器学习研究和应用受益。但是,由于其源自量子力学的根源,到目前为止,该领域的研究一直限制在物理界的权限范围内,而来自其他学科的研究人员不容易获得大多数工作。在本文中,我们提供背景并总结量子计算的关键结果,然后再探索其在监督机器学习问题上的应用。通过避免与量子计算相关的物理学的结果,我们希望使数据科学家,机器学习从业人员和研究人员从学科中访问此介绍。
The last two decades have seen an explosive growth in the theory and practice of both quantum computing and machine learning. Modern machine learning systems process huge volumes of data and demand massive computational power. As silicon semiconductor miniaturization approaches its physics limits, quantum computing is increasingly being considered to cater to these computational needs in the future. Small-scale quantum computers and quantum annealers have been built and are already being sold commercially. Quantum computers can benefit machine learning research and application across all science and engineering domains. However, owing to its roots in quantum mechanics, research in this field has so far been confined within the purview of the physics community, and most work is not easily accessible to researchers from other disciplines. In this paper, we provide a background and summarize key results of quantum computing before exploring its application to supervised machine learning problems. By eschewing results from physics that have little bearing on quantum computation, we hope to make this introduction accessible to data scientists, machine learning practitioners, and researchers from across disciplines.