大型强子对撞机自动特征提取的基础--点云和图形

Akanksha Bhardwaj, Partha Konar, Vishal Ngairangbam
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摘要

深度学习算法将在即将运行的大型强子对撞机(LHC)中发挥关键作用,帮助加强从快速准确的探测器模拟到探测标准模型可能偏差的物理分析等各方面的工作。这些新算法改变游戏规则的特点是从高维输入空间中提取相关信息的能力,通常被视为 "取代专家 "设计物理直观变量的能力。乍一看,这似乎没错,但实际情况却与此相去甚远。现有研究表明,物理启发特征提取器除了能提高对所提取特征的定性理解外,还有很多优势。在这篇综述中,我们将从现象学的角度系统地探讨自动特征提取以及物理启发架构的动机。我们还讨论了来自物理学的先验知识如何导致点云表示的自然性,并讨论了基于图的大型强子对撞机现象学应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Foundations of automatic feature extraction at LHC–point clouds and graphs

Deep learning algorithms will play a key role in the upcoming runs of the Large Hadron Collider (LHC), helping bolster various fronts ranging from fast and accurate detector simulations to physics analysis probing possible deviations from the Standard Model. The game-changing feature of these new algorithms is the ability to extract relevant information from high-dimensional input spaces, often regarded as “replacing the expert” in designing physics-intuitive variables. While this may seem true at first glance, it is far from reality. Existing research shows that physics-inspired feature extractors have many advantages beyond improving the qualitative understanding of the extracted features. In this review, we systematically explore automatic feature extraction from a phenomenological viewpoint and the motivation for physics-inspired architectures. We also discuss how prior knowledge from physics results in the naturalness of the point cloud representation and discuss graph-based applications to LHC phenomenology.

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