论文标题

用图形神经网络进行监督的喷气聚类,用于洛伦兹

Supervised Jet Clustering with Graph Neural Networks for Lorentz Boosted Bosons

论文作者

Ju, Xiangyang, Nachman, Benjamin

论文摘要

传统上,喷气聚类是一项无监督的学习任务,因为没有独特的方法将Hadronic最终状态与产生它们的夸克和Gluon自由度联系起来。但是,对于$ W $,$ Z $和Higgs玻色子等未颜色的粒子,大约(尽管不是完全)将最终状态Hadron与祖先相关联。通过将模拟的最终状态HADRON标记为从未颜色的粒子中下降,可以训练一种监督的学习方法来创建玻色子喷气机。这种方法在各个颗粒上都非常有效,并确定源自同一未颜色粒子的粒子之间的连接。图形神经网络非常适合此目的,因为它们可以对无序集合起作用,并自然地在具有相同标签的粒子之间建立较强的连接。这些网络用于训练监督的喷气聚类算法。这些图形喷气机的运动属性可以更好地匹配模拟的Lorentz增强的$ W $ BOSON的属性。此外,图形喷气机包含更多信息,以区分通用夸克喷气机的$ W $喷气机。这项工作标志着喷气物理学新探索的开始,它使用机器学习来优化喷气机的构建,而不仅仅是从喷气组成成分计算出的观察力。

Jet clustering is traditionally an unsupervised learning task because there is no unique way to associate hadronic final states with the quark and gluon degrees of freedom that generated them. However, for uncolored particles like $W$, $Z$, and Higgs bosons, it is possible to approximately (though not exactly) associate final state hadrons to their ancestor. By labeling simulated final state hadrons as descending from an uncolored particle, it is possible to train a supervised learning method to create boson jets. Such a method much operates on individual particles and identifies connections between particles originating from the same uncolored particle. Graph neural networks are well-suited for this purpose as they can act on unordered sets and naturally create strong connections between particles with the same label. These networks are used to train a supervised jet clustering algorithm. The kinematic properties of these graph jets better match the properties of simulated Lorentz-boosted $W$ bosons. Furthermore, the graph jets contain more information for discriminating $W$ jets from generic quark jets. This work marks the beginning of a new exploration in jet physics to use machine learning to optimize the construction of jets and not only the observables computed from jet constituents.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源