Probing Higgs portals with matrix-element based kinematic discriminants in $ZZ \to 4 \ell$ production
Ulrich Haisch, Gabri\"el Koole

TL;DR
This paper investigates how matrix-element based kinematic discriminants can improve the sensitivity of future collider experiments in probing Higgs portal interactions, especially when new particles are kinematically inaccessible.
Contribution
It introduces a novel analysis method using matrix-element based discriminants to enhance constraints on Higgs portals in $ZZ o 4 \,\ell$ production at future colliders.
Findings
Enhanced sensitivity at HL-LHC with discriminants versus invariant mass alone
Potential of future colliders to constrain Higgs portals more effectively
Complementary constraints from double-Higgs production analysis
Abstract
A Higgs portal in the form of the operator provides a minimal and theoretically motivated link between the Standard Model (SM) and new physics. While Higgs portals can be constrained well by exotic Higgs decays if the beyond-the-SM states are light, testing scenarios where these particles are kinematically inaccessible is known to be challenging. We explore the sensitivity of future hadron collider measurements of production in constraining Higgs portal interactions. It is shown that by using a matrix-element based kinematic discriminant the reach of the high-luminosity option of the Large Hadron Collider (LHC) can be significantly enhanced compared to studies that are based on measurements of the four-lepton invariant mass spectrum alone. We also analyse the potential of the high-energy upgrade of the LHC and a Future Circular Collider in constraining new…
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Taxonomy
TopicsParticle physics theoretical and experimental studies · Computational Physics and Python Applications · Particle Detector Development and Performance
