在√s = 13 TeV的质子-质子碰撞中具有异常射流子结构的双喷流共振的模型不可知搜索。

Cms Collaboration
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引用次数: 0

摘要

本文提出了一种与模型无关的在1.8-6 TeV质量范围内的dijet末态窄共振的搜索方法。假设该信号产生的射流具有由轻夸克或胶子发起的非典型射流的亚结构,并具有最小的附加假设。利用多元机器学习方法获得搜索区域,选择具有异常子结构的射流。为了最大限度地提高对未知新物理特征的灵敏度,使用了一系列互补的异常检测方法——基于无监督、弱监督和半监督算法。这些算法应用于在大型强子对撞机上的CMS实验记录的积分光度为138 fb$^{-1}$的数据,质心能量为13 TeV。没有看到明显超出背景预期的过度行为。排除限制是在共振质量、射流质量和射流子结构变化的基准信号模型的产生截面上推导出来的。许多这些特征以前都没有被寻找过,这使得在相应的基准模型上报告的一些限制是有史以来第一次。与包含基准和基于子结构的搜索策略相比,发现异常检测方法显著提高了对各种模型的敏感性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model-agnostic search for dijet resonances with anomalous jet substructure in proton-proton collisions at √s = 13 TeV.

This paper presents a model-agnostic search for narrow resonances in the dijet final state in the mass range 1.8-6 TeV. The signal is assumed to produce jets with substructure atypical of jets initiated by light quarks or gluons, with minimal additional assumptions. Search regions are obtained by utilizing multivariate machine-learning methods to select jets with anomalous substructure. A collection of complementary anomaly detection methods - based on unsupervised, weakly supervised, and semisupervised algorithms - are used in order to maximize the sensitivity to unknown new physics signatures. These algorithms are applied to data corresponding to an integrated luminosity of 138 fb$^{-1}$, recorded by the CMS experiment at the LHC, at a center-of-mass energy of 13 TeV. No significant excesses above background expectations are seen. Exclusion limits are derived on the production cross section of benchmark signal models varying in resonance mass, jet mass, and jet substructure. Many of these signatures have not been previously sought, making several of the limits reported on the corresponding benchmark models the first ever. When compared to benchmark inclusive and substructure-based search strategies, the anomaly detection methods are found to significantly enhance the sensitivity to a variety of models.

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