Application of Quantum Machine Learning using the Quantum Variational Classifier Method to High Energy Physics Analysis at the LHC on IBM Quantum Computer Simulator and Hardware with 10 qubits
Sau Lan Wu, Jay Chan, Wen Guan, Shaojun Sun, Alex Wang, Chen Zhou,, Miron Livny, Federico Carminati, Alberto Di Meglio, Andy C. Y. Li, Joseph, Lykken, Panagiotis Spentzouris, Samuel Yen-Chi Chen, Shinjae Yoo and, Tzu-Chieh Wei

TL;DR
This paper explores the application of quantum machine learning, specifically the quantum variational classifier, to analyze high energy physics data from the LHC using IBM's quantum systems, showing promising results comparable to classical methods.
Contribution
It demonstrates the feasibility of using quantum variational classifiers for LHC physics analyses on current quantum hardware and simulators, with potential for future high-energy physics research.
Findings
Quantum variational classifier performs similarly to classical algorithms on small datasets.
Quantum hardware shows promising discrimination power in physics analysis.
Quantum machine learning can differentiate signal from background in realistic datasets.
Abstract
One of the major objectives of the experimental programs at the LHC is the discovery of new physics. This requires the identification of rare signals in immense backgrounds. Using machine learning algorithms greatly enhances our ability to achieve this objective. With the progress of quantum technologies, quantum machine learning could become a powerful tool for data analysis in high energy physics. In this study, using IBM gate-model quantum computing systems, we employ the quantum variational classifier method in two recent LHC flagship physics analyses: (Higgs boson production in association with a top quark pair) and (Higgs boson decays to two muons, probing the Higgs boson couplings to second-generation fermions). We have obtained early results with 10 qubits on the IBM quantum simulator and the IBM quantum hardware. With small training…
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