Exploring Exotic Decays of the Higgs Boson to Multi-Photons at the LHC via Multimodal Learning Approaches
A. Hammad, P. Ko, Chih-Ting Lu, Myeonghun Park

TL;DR
This paper investigates the potential for detecting exotic Higgs decays into multi-photon signatures at the LHC using multimodal machine learning techniques, addressing challenges in identifying highly boosted dark sector particles.
Contribution
It introduces a novel application of transformer-based multimodal learning to distinguish exotic Higgs decay signatures from background noise at the LHC.
Findings
Transformer encoder effectively separates signal from background
Multimodal approach improves detection sensitivity
Analysis demonstrates feasibility of identifying boosted dark sector particles
Abstract
The Standard Model (SM) Higgs boson, the most recently discovered elementary particle, may still serve as a mediator between the SM sector and a new physics sector related to dark matter (DM). The Large Hadron Collider (LHC) has not yet fully constrained the physics associated with the Higgs boson, leaving room for such possibilities. Among the various potential mass scales of the dark sector, the sub-GeV mass range is particularly intriguing. This parameter space presents significant challenges for DM direct detection experiments that rely on nuclear recoils. Various innovative experimental methods are currently under investigation to explore this sub-GeV dark sector. The LHC, functioning as a Higgs factory, could explore this sector once the challenge of identifying DM signals is resolved. Due to the significantly lower mass of particles in the dark sector compared to the Higgs boson,…
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Taxonomy
TopicsParticle physics theoretical and experimental studies · High-Energy Particle Collisions Research · Particle Detector Development and Performance
