Indico celebrates its 20th anniversary! Check our blog post for more information!

9–13 May 2022
CERN
Europe/Zurich timezone

Particle Transformer for Jet Tagging

13 May 2022, 11:55
25m
500/1-001 - Main Auditorium (CERN)

500/1-001 - Main Auditorium

CERN

400
Show room on map
Regular talk Workshop

Speaker

Sitian Qian (Peking University (CN))

Description

Jet tagging is a critical yet challenging classification task in particle physics. While deep learning has transformed jet tagging and significantly improved performance, the lack of a large-scale public dataset impedes further enhancement. In this work, we present JetClass, a new comprehensive dataset for jet tagging. The JetClass dataset consists of 100 M jets, about two orders of magnitude larger than existing public datasets. A total of 10 types of jets are simulated, including several types unexplored for tagging so far. Based on the large dataset, we propose a new Transformer-based architecture for jet tagging, called Particle Transformer (ParT). By incorporating pairwise particle interactions in the attention mechanism, ParT achieves higher tagging performance than a plain Transformer and surpasses the previous state-of-the-art, ParticleNet, by a large margin. The pre-trained ParT models, once fine-tuned, also substantially enhance the performance on two widely adopted jet tagging benchmarks.

https://arxiv.org/abs/2202.03772

Primary authors

Congqiao Li (Peking University (CN)) Sitian Qian (Peking University (CN)) Huilin Qu (CERN)

Presentation materials