QCD masterclass lectures on jet physics and machine learning

IF 4.2 2区 物理与天体物理 Q2 PHYSICS, PARTICLES & FIELDS The European Physical Journal C Pub Date : 2024-10-28 DOI:10.1140/epjc/s10052-024-13341-0
Andrew J. Larkoski
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Abstract

These lectures were presented at the 2024 QCD Masterclass in Saint-Jacut-de-la-Mer, France. They introduce and review fundamental theorems and principles of machine learning within the context of collider particle physics, focused on application to jet identification and discrimination. Numerous examples of binary discrimination in jet physics are studied in detail, including \(H\rightarrow b{\bar{b}}\) identification in fixed-order perturbation theory, generic one- versus two-prong discrimination with parametric power counting techniques, and up versus down quark jet classification by assuming the central limit theorem, isospin conservation, and a convergent moment expansion of the single particle energy distribution. Quark versus gluon jet discrimination is considered in multiple contexts, from using additive, infrared and collinear safe observables, to using hadronic multiplicity, and to including measurements of the jet charge. While many of the results presented here are well known, some novel results are presented, the most prominent being a parametrized expression for the likelihood ratio of quark versus gluon discrimination for jets on which hadronic multiplicity and jet charge are simultaneously measured. End-of-lecture exercises are also provided.

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关于射流物理和机器学习的 QCD 大师班讲座
这些讲座是在法国圣雅克德拉梅尔举行的 2024 年 QCD 大师班上发表的。它们介绍并回顾了对撞机粒子物理学背景下机器学习的基本定理和原则,重点是在射流识别和分辨中的应用。他们详细研究了射流物理学中二元辨别的大量实例,包括固定阶扰动理论中的(H\rightarrow b{bar{b}}/)辨别、使用参数功率计数技术的通用一元与二元辨别,以及通过假定中心极限定理、等空间守恒和单粒子能量分布的收敛矩扩展进行的上夸克与下夸克射流分类。夸克和胶子射流的判别是在多种背景下考虑的,从使用加性、红外和共线安全观测指标,到使用强子倍性,再到包括射流电荷的测量。虽然这里介绍的许多结果都是众所周知的,但也介绍了一些新的结果,其中最突出的是同时测量强子倍性和喷流电荷的喷流的夸克与胶子判别似然比的参数化表达式。还提供了课后习题。
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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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