Large-Scale Pretraining and Finetuning for Efficient Jet Classification in Particle Physics
Zihan Zhao, Farouk Mokhtar, Raghav Kansal, Haoyang Li, and Javier, Duarte

TL;DR
This paper demonstrates that self-supervised learning on large unlabeled datasets significantly improves jet classification performance in particle physics, reducing reliance on costly labeled data and enhancing computational efficiency.
Contribution
It introduces a contrastive self-supervised pretraining approach for jet classification, enabling effective use of unlabeled data in high-energy physics.
Findings
SSL pretraining improves classification accuracy
Reduces need for labeled simulation data
Enhances computational efficiency
Abstract
This study introduces an innovative approach to analyzing unlabeled data in high-energy physics (HEP) through the application of self-supervised learning (SSL). Faced with the increasing computational cost of producing high-quality labeled simulation samples at the CERN LHC, we propose leveraging large volumes of unlabeled data to overcome the limitations of supervised learning methods, which heavily rely on detailed labeled simulations. By pretraining models on these vast, mostly untapped datasets, we aim to learn generic representations that can be finetuned with smaller quantities of labeled data. Our methodology employs contrastive learning with augmentations on jet datasets to teach the model to recognize common representations of jets, addressing the unique challenges of LHC physics. Building on the groundwork laid by previous studies, our work demonstrates the critical ability of…
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Taxonomy
TopicsComputational Physics and Python Applications · Astrophysics and Cosmic Phenomena · Particle physics theoretical and experimental studies
