Abstract
Subtracting event samples is a common task in LHC simulation and
analysis, and standard solutions tend to be inefficient. We employ
generative adversarial networks to produce new event samples
with a phase space distribution corresponding to added or subtracted
input samples. We first illustrate for a toy example how such a
network beats the statistical limitations of the training
data. We then show how such a network can be used to subtract
background events or to include non-local collinear subtraction
events at the level of unweighted 4-vector events.
Funder
Deutsche Forschungsgemeinschaft
Max Planck Society
Cited by
19 articles.
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