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Graph Neural Networks for Particle Reconstruction in High Energy Physics detectors

Authors :
Ju, Xiangyang
Farrell, Steven
Calafiura, Paolo
Murnane, Daniel
Prabhat
Gray, Lindsey
Klijnsma, Thomas
Pedro, Kevin
Cerati, Giuseppe
Kowalkowski, Jim
Perdue, Gabriel
Spentzouris, Panagiotis
Tran, Nhan
Vlimant, Jean-Roch
Zlokapa, Alexander
Pata, Joosep
Spiropulu, Maria
An, Sitong
Aurisano, Adam
Hewes, V
Tsaris, Aristeidis
Terao, Kazuhiro
Usher, Tracy
Publication Year :
2020

Abstract

Pattern recognition problems in high energy physics are notably different from traditional machine learning applications in computer vision. Reconstruction algorithms identify and measure the kinematic properties of particles produced in high energy collisions and recorded with complex detector systems. Two critical applications are the reconstruction of charged particle trajectories in tracking detectors and the reconstruction of particle showers in calorimeters. These two problems have unique challenges and characteristics, but both have high dimensionality, high degree of sparsity, and complex geometric layouts. Graph Neural Networks (GNNs) are a relatively new class of deep learning architectures which can deal with such data effectively, allowing scientists to incorporate domain knowledge in a graph structure and learn powerful representations leveraging that structure to identify patterns of interest. In this work we demonstrate the applicability of GNNs to these two diverse particle reconstruction problems.<br />Comment: Presented at NeurIPS 2019 Workshop "Machine Learning and the Physical Sciences"

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2003.11603
Document Type :
Working Paper