Quantum Machine Learning Applications in High-Energy Physics

Andrea Delgado, Kathleen E. Hamilton
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Abstract

Some of the most significant achievements of the modern era of particle physics, such as the discovery of the Higgs boson, have been made possible by the tremendous effort in building and operating large-scale experiments like the Large Hadron Collider or the Tevatron. In these facilities, the ultimate theory to describe matter at the most fundamental level is constantly probed and verified. These experiments often produce large amounts of data that require storing, processing, and analysis techniques that continually push the limits of traditional information processing schemes. Thus, the High-Energy Physics (HEP) field has benefited from advancements in information processing and the development of algorithms and tools for large datasets. More recently, quantum computing applications have been investigated to understand how the community can benefit from the advantages of quantum information science. Nonetheless, to unleash the full potential of quantum computing, there is a need to understand the quantum behavior and, thus, scale up current algorithms beyond what can be simulated in classical processors. In this work, we explore potential applications of quantum machine learning to data analysis tasks in HEP and how to overcome the limitations of algorithms targeted for Noisy Intermediate-Scale Quantum (NISQ) devices.
量子机器学习在高能物理中的应用
现代粒子物理学的一些最重要的成就,如希格斯玻色子的发现,都是在建造和操作大型实验(如大型强子对撞机或Tevatron)的巨大努力下才得以实现的。在这些设施中,在最基本的层面上描述物质的终极理论不断被探索和验证。这些实验通常会产生大量的数据,需要存储、处理和分析技术,不断突破传统信息处理方案的极限。因此,高能物理(HEP)领域受益于信息处理的进步以及大型数据集算法和工具的发展。最近,人们对量子计算应用进行了研究,以了解社区如何从量子信息科学的优势中受益。尽管如此,为了释放量子计算的全部潜力,有必要了解量子行为,从而扩大当前算法的规模,使其超出经典处理器所能模拟的范围。在这项工作中,我们探索了量子机器学习在HEP数据分析任务中的潜在应用,以及如何克服针对噪声中尺度量子(NISQ)设备的算法的局限性。
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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