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DeeLeMa: Missing information search with Deep Learning for Mass estimation

Authors :
Ban, Kayoung
Dong Woo Kang
Kim, Tae Geun
Park, Seong Chan
Park, Yeji
Source :
INSPIRE-HEP

Abstract

We present DeeLeMa, a deep learning network to analyze energies and momenta in particle collisions at high energy colliders, especially DeeLeMa is constructed based on symmetric event topology, and the generated mass distributions show robust peaks at the physical masses after the combinatoric uncertainties, and detector smearing effects are taken into account. DeeLeMa can be widely used in different event topologies by adopting the corresponding kinematic symmetries.

Details

Database :
OpenAIRE
Journal :
INSPIRE-HEP
Accession number :
edsair.doi.dedup.....962d97ab1b61a863ba6435519570ef44