IFLP   13074
INSTITUTO DE FISICA LA PLATA
Unidad Ejecutora - UE
artículos
Título:
Imposing exclusion limits on new physics with machine-learned likelihoods
Autor/es:
ERNESTO ARGANDA; MARTIN DE LOS RIOS; ROSA MARÍA SANDÁ SEOANE; ANDRES D. PEREZ
Revista:
Proceedings of Science
Editorial:
SISSA
Referencias:
Lugar: Trieste; Año: 2022 vol. 2022 p. 1226 - 1232
ISSN:
1824-8039
Resumen:
Machine-Learned Likelihood (MLL) is a method that, by combining modern machine-learning techniques with likelihood-based inference tests, allows estimating the experimental sensitivity of high-dimensional data sets. Here we extend the MLL method by including the exclusion hypothesis tests and study it first on a toy model of multivariate Gaussian distributions, where the true probability distribution functions are known. We then apply it to a case of interest in the search for new physics at the LHC, in which a Z′ boson decays into lepton pairs, comparing the performance of MLL for estimating 95% CL exclusion limits with respect to the prospects reported by ATLAS at 14 TeV with a luminosity of 3 ab−1.