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Application of quantum machine learning using the quantum kernel algorithm on high energy physics analysis at the LHC

Authors :
Sau Lan Wu
Shaojun Sun
Wen Guan
Chen Zhou
Jay Chan
Chi Lung Cheng
Tuan Pham
Yan Qian
Alex Zeng Wang
Rui Zhang
Miron Livny
Jennifer Glick
Panagiotis Kl. Barkoutsos
Stefan Woerner
Ivano Tavernelli
Federico Carminati
Alberto Di Meglio
Andy C. Y. Li
Joseph Lykken
Panagiotis Spentzouris
Samuel Yen-Chi Chen
Shinjae Yoo
Tzu-Chieh Wei
Source :
Physical Review Research, Vol 3, Iss 3, p 033221 (2021)
Publication Year :
2021
Publisher :
American Physical Society, 2021.

Abstract

Quantum machine learning could possibly become a valuable alternative to classical machine learning for applications in high energy physics by offering computational speedups. In this study, we employ a support vector machine with a quantum kernel estimator (QSVM-Kernel method) to a recent LHC flagship physics analysis: tt[over ¯]H (Higgs boson production in association with a top quark pair). In our quantum simulation study using up to 20 qubits and up to 50000 events, the QSVM-Kernel method performs as well as its classical counterparts in three different platforms from Google Tensorflow Quantum, IBM Quantum, and Amazon Braket. Additionally, using 15 qubits and 100 events, the application of the QSVM-Kernel method on the IBM superconducting quantum hardware approaches the performance of a noiseless quantum simulator. Our study confirms that the QSVM-Kernel method can use the large dimensionality of the quantum Hilbert space to replace the classical feature space in realistic physics data sets.

Subjects

Subjects :
Physics
QC1-999

Details

Language :
English
ISSN :
26431564
Volume :
3
Issue :
3
Database :
Directory of Open Access Journals
Journal :
Physical Review Research
Publication Type :
Academic Journal
Accession number :
edsdoj.47e6843f125a47ed8b9a8f9972bb4712
Document Type :
article
Full Text :
https://doi.org/10.1103/PhysRevResearch.3.033221