Abstract
LHC analyses directly comparing data and simulated events bear the
danger of using first-principle predictions only as a black-box
part of event simulation. We show how simulations, for instance, of
detector effects can instead be inverted using generative
networks. This allows us to reconstruct parton level information
from measured events. Our results illustrate how, in general, fully
conditional generative networks can statistically invert Monte Carlo
simulations. As a technical by-product we show how a maximum mean
discrepancy loss can be staggered or cooled.
Funder
Deutsche Forschungsgemeinschaft
Subject
General Physics and Astronomy
Cited by
57 articles.
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