Detect anomalous quartic gauge couplings at muon colliders with quantum kernel k-means

IF 4.2 2区 物理与天体物理 Q2 PHYSICS, PARTICLES & FIELDS
Shuai Zhang, Ke-Xin Chen, Ji-Chong Yang
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Abstract

In recent years, with the increasing luminosities of colliders, handling the growing amount of data has become a major challenge for future New Physics (NP) phenomenological research. In order to improve efficiency, machine learning algorithms have been introduced into the field of high-energy physics. As a machine learning algorithm, kernel k-means has been demonstrated to be useful for searching NP signals. It is well known that the kernel k-means algorithm can be carried out with the help of quantum computing, which suggests that quantum kernel k-means (QKKM) is also a potential tool for NP phenomenological studies in the future. This paper investigates how to search for NP signals using QKKM. Taking the \(\mu ^+\mu ^-\rightarrow \nu {\bar{\nu }}\gamma \gamma \) process at a muon collider as an example, the dimension-8 operators contributing to anomalous quartic gauge couplings (aQGCs) are studied. The expected coefficient constraints obtained using the QKKM of three different forms of quantum kernels, as well as the constraints obtained by the classical k-means algorithm are presented, and it can be shown that QKKM can help to find the signal of aQGCs. Comparing the classical k-means anomaly detection algorithm with QKKM, it is indicated that the QKKM is able to archive a better cut efficiency.

用量子核k-均值探测介子对撞机的反常四次规范耦合
近年来,随着对撞机光度的不断提高,处理不断增长的数据量已成为未来新物理学(NP)现象学研究的一大挑战。为了提高效率,机器学习算法被引入高能物理领域。作为一种机器学习算法,核 k-means 已被证明可用于搜索 NP 信号。众所周知,核仁 k-means 算法可以在量子计算的帮助下进行,这表明量子核仁 k-means (QKKM)也是未来 NP 现象学研究的潜在工具。本文研究了如何利用QKKM搜索NP信号。以μ子对撞机上的\(\mu ^+\mu ^-\rightarrow \nu {\bar{\nu }}\gamma \gamma \)过程为例,研究了贡献于反常四元规耦合(aQGCs)的8维算子。文中给出了利用三种不同形式量子核的QKKM得到的预期系数约束,以及利用经典k-means算法得到的约束,并证明QKKM有助于发现aQGCs的信号。将经典的 k-means 异常检测算法与 QKKM 进行比较,结果表明 QKKM 能够提供更好的切割效率。
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来源期刊
The European Physical Journal C
The European Physical Journal C 物理-物理:粒子与场物理
CiteScore
8.10
自引率
15.90%
发文量
1008
审稿时长
2-4 weeks
期刊介绍: Experimental Physics I: Accelerator Based High-Energy Physics Hadron and lepton collider physics Lepton-nucleon scattering High-energy nuclear reactions Standard model precision tests Search for new physics beyond the standard model Heavy flavour physics Neutrino properties Particle detector developments Computational methods and analysis tools Experimental Physics II: Astroparticle Physics Dark matter searches High-energy cosmic rays Double beta decay Long baseline neutrino experiments Neutrino astronomy Axions and other weakly interacting light particles Gravitational waves and observational cosmology Particle detector developments Computational methods and analysis tools Theoretical Physics I: Phenomenology of the Standard Model and Beyond Electroweak interactions Quantum chromo dynamics Heavy quark physics and quark flavour mixing Neutrino physics Phenomenology of astro- and cosmoparticle physics Meson spectroscopy and non-perturbative QCD Low-energy effective field theories Lattice field theory High temperature QCD and heavy ion physics Phenomenology of supersymmetric extensions of the SM Phenomenology of non-supersymmetric extensions of the SM Model building and alternative models of electroweak symmetry breaking Flavour physics beyond the SM Computational algorithms and tools...etc.
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