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      Deep Learning Searches for Vector-Like Leptons at the LHC and Electron/Muon Colliders

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          Abstract

          The discovery potential of both singlet and doublet vector-like leptons (VLLs) at the Large Hadron Collider (LHC) as well as at the not-so-far future muon and electron machines is explored. The focus is on a single production channel for LHC direct searches while double production signatures are proposed for the leptonic colliders. Implications for the discovery of VLLs in view of the recently announced muon \((g-2)_\mu\) anomaly are also discussed. A Deep Learning algorithm to determine the discovery (or exclusion) statistical significance at the LHC is employed. While doublet VLLs can be probed up to masses of 1 TeV, their singlet counterparts have very low cross sections and can hardly be tested beyond a few hundreds of GeV at the LHC. This motivates a physics-case analysis in the context of leptonic colliders where one obtains larger cross sections in VLL double production channels, allowing to probe higher mass regimes otherwise inaccessible even to the LHC high-luminosity upgrade.

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          Author and article information

          Journal
          09 August 2021
          Article
          2108.03926
          a676fd22-7f16-4d56-b6d2-52d424439983

          http://creativecommons.org/licenses/by/4.0/

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          Custom metadata
          30 pages, 25 figures, 9 tables
          hep-ph

          High energy & Particle physics
          High energy & Particle physics

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