Reconstructing Sparticle masses at the LHC using Generative Machine Learning

Abstract

We explore a generative model framework to infer the masses of heavy particles from detector-level data over a broad parameter space. Our model combines a transformer-based detector encoder and a diffusion neural network. We first apply our model to a new physics scenario involving the pair production of wino-like chargino-neutralino, pp 1 20, in the 1 + 2γ + jets channel at the high luminosity LHC~(HL-LHC). We find that our framework can achieve mass reconstruction efficiency of 70\% for the lightest neutralino 10 and 40\% for the second lightest neutralino 20, for a mass tolerance of m = 30~GeV, across the entire parameter space accessible at the HL-LHC. We further extend our analysis to a different scenario with pp11+120 pair production at the HL-LHC in the 4+ E\!\!\!/T channel, and for a fixed value of m_20, we obtain reconstruction efficiencies 80\% over a wide range of m_10 for m = 30~GeV.

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