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Preprint
Report number arXiv:2407.08682
Title Jet Tagging with More-Interaction Particle Transformer
Author(s) Wu, Yifan (Shanghai U. Sci. Tech.) ; Wang, Kun (Shanghai U. Sci. Tech.) ; Li, Congqiao (Peking U., SKLNPT) ; Qu, Huilin (CERN) ; Zhu, Jingya (Henan U.)
Document contact Contact: arXiv
Imprint 2024-07-11
Number of pages 12
Note 12 pages, 6 figures, 5 tables. The code is available at the following GitHub repository: https://github.com/USST-HEP/MIParT
DOI 10.1088/1674-1137/ad7f3d
Subject category physics.data-an ; Other Fields of Physics ; hep-ex ; Particle Physics - Experiment ; hep-ph ; Particle Physics - Phenomenology
Abstract In this study, we introduce the More-Interaction Particle Transformer (MIParT), a novel deep learning neural network designed for jet tagging. This framework incorporates our own design, the More-Interaction Attention (MIA) mechanism, which increases the dimensionality of particle interaction embeddings. We tested MIParT using the top tagging and quark-gluon datasets. Our results show that MIParT not only matches the accuracy and AUC of LorentzNet and a series of Lorentz-equivariant methods, but also significantly outperforms the ParT model in background rejection. Specifically, it improves background rejection by approximately 25% at a 30% signal efficiency on the top tagging dataset and by 3% on the quark-gluon dataset. Additionally, MIParT requires only 30% of the parameters and 53% of the computational complexity needed by ParT, proving that high performance can be achieved with reduced model complexity. For very large datasets, we double the dimension of particle embeddings, referring to this variant as MIParT-Large (MIParT-L). We find that MIParT-L can further capitalize on the knowledge from large datasets. From a model pre-trained on the 100M JetClass dataset, the background rejection performance of the fine-tuned MIParT-L improved by 39% on the top tagging dataset and by 6% on the quark-gluon dataset, surpassing that of the fine-tuned ParT. Specifically, the background rejection of fine-tuned MIParT-L improved by an additional 2% compared to the fine-tuned ParT. The results suggest that MIParT has the potential to advance efficiency benchmarks for jet tagging and event identification in particle physics. The code is available at the following GitHub repository: https://github.com/USST-HEP/MIParT
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Copyright/License preprint: (License: CC BY 4.0)



 


 記錄創建於2024-12-11,最後更新在2024-12-12


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