2024
DOI: 10.1103/physrevd.109.095018
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Scalar bounded-from-below conditions from Bayesian active learning

George N. Wojcik

Abstract: We present a procedure leveraging Bayesian deep active learning to rapidly produce highly accurate approximate bounded-from-below conditions for arbitrary renormalizable scalar potentials, in the form of a neural network which may be saved and exported for use in arbitrary parameter space scans. We explore the performance of our procedure on three different scalar potentials with either highly nontrivial or unknown symbolic bounded-from-below conditions (the most general two-Higgs doublet model, the three-Higg… Show more

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