Boosting dark matter searches at muon colliders with Machine Learning: the mono-Higgs channel as a case study
Mohamed Belfkir, Adil Jueid, Salah Nasri

TL;DR
This paper demonstrates that machine learning techniques, specifically Boosted-Decision Trees, significantly improve the detection of dark matter in mono-Higgs channels at future muon colliders, surpassing traditional methods.
Contribution
It introduces a BDT-based search strategy for dark matter at muon colliders, enhancing sensitivity over cut-based analyses in the mono-Higgs channel.
Findings
BDT analysis increases signal significance by factors of 8-50.
Future muon colliders can exclude DM masses up to 1 TeV.
Machine learning greatly improves dark matter detection prospects.
Abstract
The search for dark-matter (DM) candidates at high-energy colliders is one of the most promising avenues to understand the nature of this elusive component of the universe. Several searches at the Large Hadron Collider (LHC) have strongly constrained a wide range of simplified models. The combination of the bounds from the LHC with direct-detection experiments exclude the most minimal scalar singlet DM model. To address this, Lepton portal DM models are suitable candidates where DM is predominantly produced at lepton colliders since the DM candidate only interacts with the lepton sector through a mediator that carries a lepton number. In this work, we analyse the production of DM pairs in association with a Higgs boson decaying into two bottom quarks at future muon colliders in the framework of the minimal lepton portal DM model. It is found that the usual cut-based analysis methods…
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Taxonomy
TopicsParticle physics theoretical and experimental studies · Dark Matter and Cosmic Phenomena · Computational Physics and Python Applications
