4.7 Article

Quantum clustering and jet reconstruction at the LHC

期刊

PHYSICAL REVIEW D
卷 106, 期 3, 页码 -

出版社

AMER PHYSICAL SOC
DOI: 10.1103/PhysRevD.106.036021

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资金

  1. Spanish Government (Agencia Estatal de Investigacion MCIN/AEI/) [PID2020-114473GB-I00]
  2. Generalitat Valenciana [PROMETEO/2021/071]
  3. Generalitat Valenciana GenT Excellence Programme [CIDEGENT/2020/011]

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This paper discusses the application of quantum computing algorithms in jet clustering, particularly in the context of CERN's LHC and the upcoming HL-LHC. By introducing quantum subroutines and quantum circuits, exponential acceleration can be achieved in terms of data dimensionality and data length, resulting in efficiencies comparable to classical clustering algorithms.
Clustering is one of the most frequent problems in many domains, in particular, in particle physics where jet reconstruction is central in experimental analyses. Jet clustering at the CERN's Large Hadron Collider (LHC) is computationally expensive and the difficulty of this task will increase with the upcoming High-Luminosity LHC (HL-LHC). In this paper, we study the case in which quantum computing algorithms might improve jet clustering by considering two novel quantum algorithms which may speed up the classical jet clustering algorithms. The first one is a quantum subroutine to compute a Minkowski-based distance between two data points, whereas the second one consists of a quantum circuit to track the maximum into a list of unsorted data. The latter algorithm could be of value beyond particle physics, for instance in statistics. When one or both of these algorithms are implemented into the classical versions of well-known clustering algorithms (K-means, affinity propagation, and k(T) -jet) we obtain efficiencies comparable to those of their classical counterparts. Even more, exponential speed-up could be achieved, in the first two algorithms, in data dimensionality and data length when the distance algorithm or the maximum searching algorithm are applied.

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