cs.AI updates on arXiv.org 08月15日
Jet Image Tagging Using Deep Learning: An Ensemble Model
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本文提出一种基于神经网络的喷注分类方法,通过将数据转换为二维直方图,实现高效分类,提高对超越标准模型的探索能力。

arXiv:2508.10034v1 Announce Type: cross Abstract: Jet classification in high-energy particle physics is important for understanding fundamental interactions and probing phenomena beyond the Standard Model. Jets originate from the fragmentation and hadronization of quarks and gluons, and pose a challenge for identification due to their complex, multidimensional structure. Traditional classification methods often fall short in capturing these intricacies, necessitating advanced machine learning approaches. In this paper, we employ two neural networks simultaneously as an ensemble to tag various jet types. We convert the jet data to two-dimensional histograms instead of representing them as points in a higher-dimensional space. Specifically, this ensemble approach, hereafter referred to as Ensemble Model, is used to tag jets into classes from the JetNet dataset, corresponding to: Top Quarks, Light Quarks (up or down), and W and Z bosons. For the jet classes mentioned above, we show that the Ensemble Model can be used for both binary and multi-categorical classification. This ensemble approach learns jet features by leveraging the strengths of each constituent network achieving superior performance compared to either individual network.

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相关标签

高能物理 喷注分类 神经网络 数据转换 分类方法
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