Probing the Higgs Portal to a Strongly-Interacting Dark Sector at the FCC-ee
Cesare Cazzaniga, Annapaola de Cosa, Felix Kahlhoefer, Andrea S. Maria, Roberto Seidita, Emre Sitti

TL;DR
This paper investigates the potential of the FCC-ee collider to detect signals of a strongly-interacting dark sector mediated by the Higgs boson, focusing on semi-visible jets and employing machine learning techniques to improve sensitivity.
Contribution
It introduces a novel search strategy using graph neural networks to identify semi-visible jets from dark sector interactions at the FCC-ee, enhancing detection prospects.
Findings
Sensitivity to Higgs exotic branching ratios at the permille level.
Effective discrimination of semi-visible jets using kinematic features and machine learning.
Probing a wide parameter space of dark sector models.
Abstract
This work explores exotic signatures from confining dark sectors that may arise in the e+e- collision mode at the Future Circular Collider. Assuming the Higgs boson mediates the interaction between the Standard Model and the dark sector, dark quarks can be produced in e+e- collisions. The ensuing strong dynamics may lead to semi-visible jet final states, containing both visible and invisible particles. We investigate semi-visible jets with different fractions of invisible states, and enriched in leptons and photons. When the invisible component is large, selections based on kinematic features, such as the missing energy in the event, already provide good signal-to-background discrimination. For smaller invisible fractions, the reduced missing energy makes these signals more similar to Standard Model events, and we therefore employ a graph neural network jet tagger exploiting differences…
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Taxonomy
TopicsParticle physics theoretical and experimental studies · Dark Matter and Cosmic Phenomena · Computational Physics and Python Applications
