粒子物理学异常检测的机器学习

Q1 Physics and Astronomy
Vasilis Belis, Patrick Odagiu, Thea Klaeboe Aarrestad
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引用次数: 0

摘要

检测分布外数据点是粒子物理学中的一项常见任务。它可用于监测复杂的粒子探测器,或用于识别罕见的意外事件,这些事件可能预示着标准模型之外的新现象或物理学。机器学习在异常检测方面的最新进展鼓励了在粒子物理问题上使用此类技术。这篇综述文章概述了利用机器学习进行粒子物理异常检测的最新技术。我们讨论了在大型复杂数据集(如高能粒子对撞机产生的数据集)中进行异常检测所面临的挑战,并重点介绍了异常检测在粒子物理实验中的一些成功应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning for anomaly detection in particle physics

The detection of out-of-distribution data points is a common task in particle physics. It is used for monitoring complex particle detectors or for identifying rare and unexpected events that may be indicative of new phenomena or physics beyond the Standard Model. Recent advances in Machine Learning for anomaly detection have encouraged the utilization of such techniques on particle physics problems. This review article provides an overview of the state-of-the-art techniques for anomaly detection in particle physics using machine learning. We discuss the challenges associated with anomaly detection in large and complex data sets, such as those produced by high-energy particle colliders, and highlight some of the successful applications of anomaly detection in particle physics experiments.

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来源期刊
Reviews in Physics
Reviews in Physics Physics and Astronomy-Physics and Astronomy (all)
CiteScore
21.30
自引率
0.00%
发文量
8
审稿时长
98 days
期刊介绍: Reviews in Physics is a gold open access Journal, publishing review papers on topics in all areas of (applied) physics. The journal provides a platform for researchers who wish to summarize a field of physics research and share this work as widely as possible. The published papers provide an overview of the main developments on a particular topic, with an emphasis on recent developments, and sketch an outlook on future developments. The journal focuses on short review papers (max 15 pages) and these are freely available after publication. All submitted manuscripts are fully peer-reviewed and after acceptance a publication fee is charged to cover all editorial, production, and archiving costs.
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