The BSM-AI project: SUSY-AI - Generalizing LHC limits on Supersymmetry with Machine Learning
Sascha Caron, Jong Soo Kim, Krzysztof Rolbiecki, Roberto Ruiz de, Austri, Bob Stienen

TL;DR
The paper introduces SUSY-AI, a machine learning tool that rapidly predicts whether supersymmetry models are excluded by LHC data, significantly speeding up the process of testing new physics models.
Contribution
It presents SUSY-AI, a novel machine learning approach trained on extensive LHC data to efficiently determine model exclusions in supersymmetry research.
Findings
Achieves at least 93% accuracy in reproducing ATLAS exclusion regions
Validated across multiple supersymmetric models
Enables rapid exclusion testing within milliseconds
Abstract
A key research question at the Large Hadron Collider (LHC) is the test of models of new physics. Testing if a particular parameter set of such a model is excluded by LHC data is a challenge: It requires the time consuming generation of scattering events, the simulation of the detector response, the event reconstruction, cross section calculations and analysis code to test against several hundred signal regions defined by the ATLAS and CMS experiment. In the BSM-AI project we attack this challenge with a new approach. Machine learning tools are thought to predict within a fraction of a millisecond if a model is excluded or not directly from the model parameters. A first example is SUSY-AI, trained on the phenomenological supersymmetric standard model (pMSSM). About 300,000 pMSSM model sets - each tested with 200 signal regions by ATLAS - have been used to train and validate SUSY-AI. The…
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