Abstract

One of the major objectives of the experimental programs at the Large Hadron Collider (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, probing the Higgs boson couplings to the top quark) and H → μ + μ − (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 samples of 100 events on the quantum simulator, the quantum variational classifier method performs similarly to classical algorithms such as SVM (support vector machine) and BDT (boosted decision tree), which are often employed in LHC physics analyses. On the quantum hardware, the quantum variational classifier method has shown promising discrimination power, comparable to that on the quantum simulator. This study demonstrates that quantum machine learning has the ability to differentiate between signal and background in realistic physics datasets. We foresee the usage of quantum machine learning in future high-luminosity LHC physics analyses, including measurements of the Higgs boson self-couplings and searches for dark matter.

Highlights

  • One of the major objectives of the experimental programs at the Large Hadron Collider (LHC) is the discovery of new physics

  • With the progress of quantum technologies, quantum machine learning could possibly become a powerful tool for data analysis on real-world datasets such as those seen in high energy physics

  • Two recent LHC flagship physics analyses: The observation of ttH production (Higgs boson production in association with a top quark pair) in 2018 by the ATLAS and CMS experiments [6, 7] was a significant milestone for the understanding of fundamental particles and interactions

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Summary

Introduction

One of the major objectives of the experimental programs at the LHC is the discovery of new physics. In this study, using IBM gatemodel quantum computing systems, we employ the quantum variational classifier method in two recent LHC flagship physics analyses: ttH (Higgs boson production in association with a top quark pair, probing the Higgs boson couplings to the top quark) and H → μ+μ− (Higgs boson decays to two muons, probing the Higgs boson couplings to second-generation fermions). With the progress of quantum technologies, quantum machine learning could possibly become a powerful tool for data analysis on real-world datasets such as those seen in high energy physics. Two recent LHC flagship physics analyses: The observation of ttH production (Higgs boson production in association with a top quark pair) in 2018 by the ATLAS and CMS experiments [6, 7] was a significant milestone for the understanding of fundamental particles and interactions. The training is using 23 kinematic variables similar to those in [6]: the transverse momentum pT , pseudo-rapidity η and b-tagging status of up to 6 leading jets, the magnitude of the missing transverse momentum, as well as the pT /mγγ (mγγ denotes invariant mass of the photon pair) and η of the two photons

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