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Main Authors: Usman, Muhammad, Shahid, M Husnain, Ejaz, Maheen, Hani, Ummay, Fatima, Nayab, Khan, Abdul Rehman, Khan, Asifullah, Mirza, Nasir Majid
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.06638
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author Usman, Muhammad
Shahid, M Husnain
Ejaz, Maheen
Hani, Ummay
Fatima, Nayab
Khan, Abdul Rehman
Khan, Asifullah
Mirza, Nasir Majid
author_facet Usman, Muhammad
Shahid, M Husnain
Ejaz, Maheen
Hani, Ummay
Fatima, Nayab
Khan, Abdul Rehman
Khan, Asifullah
Mirza, Nasir Majid
contents Jet tagging is an essential categorization problem in high energy physics. In recent times, Deep Learning has not only risen to the challenge of jet tagging but also significantly improved its performance. In this article, we proposed an idea of a new architecture, Particle Multi-Axis transformer (ParMAT) which is a modified version of Particle transformer (ParT). ParMAT contains local and global spatial interactions within a single unit which improves its ability to handle various input lengths. We trained our model on JETCLASS, a publicly available large dataset that contains 100M jets of 10 different classes of particles. By integrating a parallel attention mechanism and pairwise interactions of particles in the attention mechanism, ParMAT achieves robustness and higher accuracy over the ParT and ParticleNet. The scalability of the model to huge datasets and its ability to automatically extract essential features demonstrate its potential for enhancing jet tagging.
format Preprint
id arxiv_https___arxiv_org_abs_2406_06638
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Particle Multi-Axis Transformer for Jet Tagging
Usman, Muhammad
Shahid, M Husnain
Ejaz, Maheen
Hani, Ummay
Fatima, Nayab
Khan, Abdul Rehman
Khan, Asifullah
Mirza, Nasir Majid
High Energy Physics - Phenomenology
Machine Learning
Jet tagging is an essential categorization problem in high energy physics. In recent times, Deep Learning has not only risen to the challenge of jet tagging but also significantly improved its performance. In this article, we proposed an idea of a new architecture, Particle Multi-Axis transformer (ParMAT) which is a modified version of Particle transformer (ParT). ParMAT contains local and global spatial interactions within a single unit which improves its ability to handle various input lengths. We trained our model on JETCLASS, a publicly available large dataset that contains 100M jets of 10 different classes of particles. By integrating a parallel attention mechanism and pairwise interactions of particles in the attention mechanism, ParMAT achieves robustness and higher accuracy over the ParT and ParticleNet. The scalability of the model to huge datasets and its ability to automatically extract essential features demonstrate its potential for enhancing jet tagging.
title Particle Multi-Axis Transformer for Jet Tagging
topic High Energy Physics - Phenomenology
Machine Learning
url https://arxiv.org/abs/2406.06638