Abstract
Monte Carlo methods are widely used in particle physics to integrate
and sample probability distributions on phase space. We present an
Artificial Neural Network (ANN) algorithm optimized for this task, and
apply it to several examples of relevance for particle physics,
including situations with non-trivial features such as sharp resonances
and soft/collinear enhancements. Excellent performance has been
demonstrated, with the trained ANN achieving unweighting efficiencies
between 30% – 75%. In contrast to traditional algorithms, the ANN-based
approach does not require that the phase space coordinates be aligned
with resonant or other features in the cross section.
Funder
National Science Foundation
Samsung Science and Technology Foundation
Subject
General Physics and Astronomy
Cited by
47 articles.
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