Mikuni V, Canelli F
University of Zurich, Winterthurerstrasse 190, 8057 Zurich, Switzerland.
Eur Phys J Plus. 2020;135(6):463. doi: 10.1140/epjp/s13360-020-00497-3. Epub 2020 Jun 3.
In high energy physics, graph-based implementations have the advantage of treating the input data sets in a similar way as they are collected by collider experiments. To expand on this concept, we propose a graph neural network enhanced by attention mechanisms called ABCNet. To exemplify the advantages and flexibility of treating collider data as a point cloud, two physically motivated problems are investigated: quark-gluon discrimination and pileup reduction. The former is an event-by-event classification, while the latter requires each reconstructed particle to receive a classification score. For both tasks, ABCNet shows an improved performance compared to other algorithms available.
在高能物理中,基于图的实现方式具有以与对撞机实验收集输入数据集相似的方式来处理这些数据集的优势。为了扩展这一概念,我们提出了一种由注意力机制增强的图神经网络,称为ABCNet。为了例证将对撞机数据视为点云处理的优势和灵活性,我们研究了两个具有物理动机的问题:夸克 - 胶子判别和堆积减除。前者是逐事件分类,而后者要求每个重建粒子都获得一个分类分数。对于这两项任务,与其他可用算法相比,ABCNet都表现出了更高的性能。