论文标题

关于中微子实验的机器学习的评论

A Review on Machine Learning for Neutrino Experiments

论文作者

Psihas, Fernanda, Groh, Micah, Tunnell, Christopher, Warburton, Karl

论文摘要

中微子实验通过观察到其与物质的直接相互作用或寻找超稀有信号来研究标准模型颗粒的理解最低。中微子的研究通常需要克服大型背景,难以捉摸的信号和小统计数据。引入最先进的机器学习工具来解决分析任务,这对全面中微子实验的这些挑战产生了重大影响。机器学习算法已成为中微子物理学不可或缺的工具,它们的发展对于下一代实验的能力非常重要。对人类和计算的障碍以及这些技术应用中仍然存在的挑战的理解对于它们在物理应用中的适当和有益利用至关重要。这篇评论介绍了中微子物理学的机器学习应用程序的当前状态,从这两个领域之间的交集的挑战和机遇方面。

Neutrino experiments study the least understood of the Standard Model particles by observing their direct interactions with matter or searching for ultra-rare signals. The study of neutrinos typically requires overcoming large backgrounds, elusive signals, and small statistics. The introduction of state-of-the-art machine learning tools to solve analysis tasks has made major impacts to these challenges in neutrino experiments across the board. Machine learning algorithms have become an integral tool of neutrino physics, and their development is of great importance to the capabilities of next generation experiments. An understanding of the roadblocks, both human and computational, and the challenges that still exist in the application of these techniques is critical to their proper and beneficial utilization for physics applications. This review presents the current status of machine learning applications for neutrino physics in terms of the challenges and opportunities that are at the intersection between these two fields.

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