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

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. 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 the k-means anomaly detection event selection strategy with quantum kernels. Taking the $\mu^+\mu^-\to v\bar{v}\gamma\gamma$ 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 and k-means algorithm are presented, it can be shown that QKKM can help to find the signal of aQGCs.
在μ介子对撞机上利用量子核K均值检测反常四元规耦合
近年来,随着对撞机光度的不断提高,处理日益增长的数据量已成为未来新物理现象研究的一大挑战。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实现,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量子核的k均值异常检测事件选择策略来搜索NP信号。以μ介子对撞机上的$\mu^+\mu^-\to v\bar{v}\gamma\gamma$ 过程为例,研究了贡献于反常四元规耦合~(aQGCs)的8维算子。研究给出了利用三种不同形式量子核的QKKM和k-means算法得到的预期系数约束,表明QKKM有助于发现aQGCs的信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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