论文标题
图形神经网络用于粒子跟踪和重建
Graph Neural Networks for Particle Tracking and Reconstruction
论文作者
论文摘要
机器学习方法在高能量物理学(HEP)中的应用历史悠久。最近,人们对利用这些方法从原始探测器数据重建粒子签名越来越兴趣。为了从最初专为计算机视觉或自然语言处理任务设计的现代深度学习算法中受益,将HEP数据转换为图像或序列是常见的实践。相反,图形神经网络(GNNS)在由具有一组功能及其成对连接的元素组成的图形数据上运行,它提供了一种替代方法,可以融合重量共享,本地连接和专业领域知识。粒子物理数据(例如跟踪检测器中的命中)通常可以表示为图形,从而使用GNNS自然。在本章中,我们概括了GNN的数学形式主义,并突出了为HEP数据设计这些网络时要考虑的方面,包括图形构造,模型体系结构,学习目标和图形合并。我们还回顾了GNN在HEP中进行粒子跟踪和重建的有希望的应用,并总结了其在当前和将来的实验中部署的前景。
Machine learning methods have a long history of applications in high energy physics (HEP). Recently, there is a growing interest in exploiting these methods to reconstruct particle signatures from raw detector data. In order to benefit from modern deep learning algorithms that were initially designed for computer vision or natural language processing tasks, it is common practice to transform HEP data into images or sequences. Conversely, graph neural networks (GNNs), which operate on graph data composed of elements with a set of features and their pairwise connections, provide an alternative way of incorporating weight sharing, local connectivity, and specialized domain knowledge. Particle physics data, such as the hits in a tracking detector, can generally be represented as graphs, making the use of GNNs natural. In this chapter, we recapitulate the mathematical formalism of GNNs and highlight aspects to consider when designing these networks for HEP data, including graph construction, model architectures, learning objectives, and graph pooling. We also review promising applications of GNNs for particle tracking and reconstruction in HEP and summarize the outlook for their deployment in current and future experiments.