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Enhancing low energy reconstruction and classification in KM3NeT/ORCA with transformers

by Iván Mozún Mateo on behalf of the KM3NeT collaboration

This is not the latest submitted version.

Submission summary

Authors (as registered SciPost users): Iván Mozún Mateo
Submission information
Preprint Link: scipost_202509_00055v2  (pdf)
Date submitted: Nov. 20, 2025, 11:07 a.m.
Submitted by: Iván Mozún Mateo
Submitted to: SciPost Physics Proceedings
Proceedings issue: The 2nd European AI for Fundamental Physics Conference (EuCAIFCon2025)
Ontological classification
Academic field: Physics
Specialties:
  • High-Energy Physics - Experiment
Approaches: Experimental, Computational

Abstract

The current KM3NeT/ORCA neutrino telescope, still under construction, has not yet reached its full potential in neutrino reconstruction capability. When training any deep learning model, no explicit information about the physics or the detector is provided, thus they remain unknown to the model. This study leverages the strengths of transformers by incorporating attention masks inspired by the physics and detector design, making the model understand both the telescope design and the neutrino physics measured on it. The study also shows the efficacy of transformers on retaining valuable information between detectors when doing fine-tuning from one configurations to another.

Current status:
Has been resubmitted

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Comments

Anonymous on 2025-11-20  [id 6052]

There is a error in the uploaded version, the bibliography is included in the first 4 pages.

Attachment:

Proceedings_EuCAIF_Conf2025_resubmission_2.pdf

David Rousseau  on 2025-11-20  [id 6053]

(in reply to Anonymous Comment on 2025-11-20 [id 6052])
Category:
objection

Thank you, this is much improved, from a superficial reading. However, the original instructions (which we could not enforce at submission stage unfortunately) ask to submit to arxiv, and then submit the arXiv to SciPost.
Could you do this now, please ? Thanks