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Explainable equivariant neural networks for particle physics: PELICAN

Authors :
Alexander Bogatskiy
Timothy Hoffman
David W. Miller
Jan T. Offermann
Xiaoyang Liu
Source :
Journal of High Energy Physics, Vol 2024, Iss 3, Pp 1-66 (2024)
Publication Year :
2024
Publisher :
SpringerOpen, 2024.

Abstract

Abstract PELICAN is a novel permutation equivariant and Lorentz invariant or covariant aggregator network designed to overcome common limitations found in architectures applied to particle physics problems. Compared to many approaches that use non-specialized architectures that neglect underlying physics principles and require very large numbers of parameters, PELICAN employs a fundamentally symmetry group-based architecture that demonstrates benefits in terms of reduced complexity, increased interpretability, and raw performance. We present a comprehensive study of the PELICAN algorithm architecture in the context of both tagging (classification) and reconstructing (regression) Lorentz-boosted top quarks, including the difficult task of specifically identifying and measuring the W-boson inside the dense environment of the Lorentz-boosted top-quark hadronic final state. We also extend the application of PELICAN to the tasks of identifying quark-initiated vs. gluon-initiated jets, and a multi-class identification across five separate target categories of jets. When tested on the standard task of Lorentz-boosted top-quark tagging, PELICAN outperforms existing competitors with much lower model complexity and high sample efficiency. On the less common and more complex task of 4-momentum regression, PELICAN also outperforms hand-crafted, non-machine learning algorithms. We discuss the implications of symmetry-restricted architectures for the wider field of machine learning for physics.

Details

Language :
English
ISSN :
10298479
Volume :
2024
Issue :
3
Database :
Directory of Open Access Journals
Journal :
Journal of High Energy Physics
Publication Type :
Academic Journal
Accession number :
edsdoj.325549b7ef224b539ad5f097a27892e7
Document Type :
article
Full Text :
https://doi.org/10.1007/JHEP03(2024)113