Novel machine learning applications at the LHC
Title: | Novel machine learning applications at the LHC |
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Authors: | Duarte, Javier M. |
Publication Year: | 2024 |
Collection: | Computer Science High Energy Physics - Experiment |
Subject Terms: | High Energy Physics - Experiment, Computer Science - Machine Learning |
More Details: | Machine learning (ML) is a rapidly growing area of research in the field of particle physics, with a vast array of applications at the CERN LHC. ML has changed the way particle physicists conduct searches and measurements as a versatile tool used to improve existing approaches and enable fundamentally new ones. In these proceedings, we describe novel ML techniques and recent results for improved classification, fast simulation, unfolding, and anomaly detection in LHC experiments. Comment: 10 pages, 10 figures, 42nd International Conference on High Energy Physics (ICHEP 2024) |
Document Type: | Working Paper |
Access URL: | http://arxiv.org/abs/2409.20413 |
Accession Number: | edsarx.2409.20413 |
Database: | arXiv |
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