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Shedding Light on Dark Matter at the LHC with Machine Learning

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Abstract

We investigate a WIMP dark matter (DM) candidate in the form of a singlino-dominated lightest supersymmetric particle (LSP) within the Z3Z_3-symmetric Next-to-Minimal Supersymmetric Standard Model. This framework gives rise to regions of parameter space where DM is obtained via co-annihilation with nearby higgsino-like electroweakinos and DM direct detection~signals are suppressed, the so-called ``blind spots". On the other hand, collider signatures remain promising due to enhanced radiative decay modes of higgsinos into the singlino-dominated LSP and a photon, rather than into leptons or hadrons. This motivates searches for radiatively decaying neutralinos, however, these signals face substantial background challenges, as the decay products are typically soft due to the small mass-splits (Δm\Delta m) between the LSP and the higgsino-like coannihilation partners. We apply a data-driven Machine Learning (ML) analysis that improves sensitivity to these subtle signals, offering a powerful complement to traditional search strategies to discover a new physics scenario. Using an LHC integrated luminosity of 100 fb1100~\mathrm{fb}^{-1} at 14 TeV14~\mathrm{TeV}, the method achieves a 5σ5\sigma discovery reach for higgsino masses up to 225 GeV225~\mathrm{GeV} with Δm ⁣ ⁣12 GeV\Delta m\!\lesssim\!12~\mathrm{GeV}, and a 2σ2\sigma exclusion up to 285 GeV285~\mathrm{GeV} with Δm ⁣ ⁣20 GeV\Delta m\!\lesssim\!20~\mathrm{GeV}. These results highlight the power of collider searches to probe DM candidates that remain hidden from current direct detection experiments, and provide a motivation for a search by the LHC collaborations using ML methods.

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