Hybrid quantum classical graph neural networks for particle track reconstruction
-
Published:2021-11-28
Issue:2
Volume:3
Page:
-
ISSN:2524-4906
-
Container-title:Quantum Machine Intelligence
-
language:en
-
Short-container-title:Quantum Mach. Intell.
Author:
Tüysüz CenkORCID, Rieger Carla, Novotny Kristiane, Demirköz Bilge, Dobos Daniel, Potamianos Karolos, Vallecorsa Sofia, Vlimant Jean-Roch, Forster Richard
Abstract
AbstractThe Large Hadron Collider (LHC) at the European Organisation for Nuclear Research (CERN) will be upgraded to further increase the instantaneous rate of particle collisions (luminosity) and become the High Luminosity LHC (HL-LHC). This increase in luminosity will significantly increase the number of particles interacting with the detector. The interaction of particles with a detector is referred to as “hit”. The HL-LHC will yield many more detector hits, which will pose a combinatorial challenge by using reconstruction algorithms to determine particle trajectories from those hits. This work explores the possibility of converting a novel graph neural network model, that can optimally take into account the sparse nature of the tracking detector data and their complex geometry, to a hybrid quantum-classical graph neural network that benefits from using variational quantum layers. We show that this hybrid model can perform similar to the classical approach. Also, we explore parametrized quantum circuits (PQC) with different expressibility and entangling capacities, and compare their training performance in order to quantify the expected benefits. These results can be used to build a future road map to further develop circuit-based hybrid quantum-classical graph neural networks.
Funder
Türkiye Atom Enerjisi Kurumu CERN
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Artificial Intelligence,Computational Theory and Mathematics,Theoretical Computer Science,Software
Reference70 articles.
1. Abadi M, Barham P, Chen J, Chen Z, Davis A, Dean J, Devin M, Ghemawat S, Irving G, Isard M et al (2016) Tensorflow: a system for large-scale machine learning. In: 12th {USENIX} symposium on operating systems design and implementation ({OSDI} 16). arXiv:1605.08695, pp 265–283 2. Abbas A, Sutter D, Zoufal C, Lucchi A, Figalli A, Woerner S (2021) The power of quantum neural networks. Nat Comput Sci 1(6): 403–409. https://doi.org/10.1038/s43588-021-00084-1 3. Albrecht J, Alves AA, Amadio G, Andronico G, Anh-Ky N, Aphecetche L, Apostolakis J, Asai M, Atzori L et al (2019) A roadmap for HEP software and computing R&D for the 2020s. Comput Softw Big Sci 3(1). https://doi.org/10.1007/s41781-018-0018-8 4. Amrouche S, Basara L, Calafiura P, Estrade V, Farrell S, Ferreira DR, Finnie L, Finnie N, Germain C, Gligorov VV et al (2019) The tracking machine learning challenge: accuracy phase. The Springer Series on Challenges in Machine Learning. https://doi.org/10.1007/978-3-030-29135-8_9. arXiv:1904.06778 5. Amrouche S, Basara L, Calafiura P, Emeliyanov D, Estrade V, Farrell S, Germain C, Vava Gligorov V, Golling T, Gorbunov S et al (2021) The tracking machine learning challenge : throughput phase. arXiv:2105.01160
Cited by
26 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|