论文标题

粒子物理中的图形神经网络:实现,创新和挑战

Graph Neural Networks in Particle Physics: Implementations, Innovations, and Challenges

论文作者

Thais, Savannah, Calafiura, Paolo, Chachamis, Grigorios, DeZoort, Gage, Duarte, Javier, Ganguly, Sanmay, Kagan, Michael, Murnane, Daniel, Neubauer, Mark S., Terao, Kazuhiro

论文摘要

许多物理系统可以最好地理解为具有关联关系的离散数据集。如果以前这些数据集已作为串联或图像数据配制,以匹配可用的机器学习体系结构,则随着图形神经网络(GNN)的出现,这些系统可以作为图形本地学习。这允许将各种高级和低级物理特征附加到测量上,并且通过同样的标记,可以通过相同的GNN体系结构来完成各种HEP任务。 GNN在重建,标记,生成和端到端分析中发现了强大的用例。随着GNN在行业中的广泛采用,HEP社区的位置良好,可以从GNN潜伏期和记忆使用量的快速改善中受益。但是,行业用例并不完全与HEP保持一致,需要做很多工作,以最好地将独特的GNN功能与独特的HEP障碍相匹配。我们在这里提出了一系列这些功能,目前对HEP社区进行了良好的预测,并且仍然不成熟。我们希望在机器学习中捕捉图形技术的景观,并指出最大的差距,这些差距抑制了潜在的研究。

Many physical systems can be best understood as sets of discrete data with associated relationships. Where previously these sets of data have been formulated as series or image data to match the available machine learning architectures, with the advent of graph neural networks (GNNs), these systems can be learned natively as graphs. This allows a wide variety of high- and low-level physical features to be attached to measurements and, by the same token, a wide variety of HEP tasks to be accomplished by the same GNN architectures. GNNs have found powerful use-cases in reconstruction, tagging, generation and end-to-end analysis. With the wide-spread adoption of GNNs in industry, the HEP community is well-placed to benefit from rapid improvements in GNN latency and memory usage. However, industry use-cases are not perfectly aligned with HEP and much work needs to be done to best match unique GNN capabilities to unique HEP obstacles. We present here a range of these capabilities, predictions of which are currently being well-adopted in HEP communities, and which are still immature. We hope to capture the landscape of graph techniques in machine learning as well as point out the most significant gaps that are inhibiting potentially large leaps in research.

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