Affiliation:
1. University of Göttingen
Abstract
We present a novel approach for the integration of scattering cross sections
and the generation of partonic event samples in high-energy physics.
We propose an importance sampling technique capable of overcoming typical
deficiencies of existing approaches by incorporating neural networks.
The method guarantees full phase space coverage and the exact reproduction of
the desired target distribution, in our case given by the squared transition
matrix element.
We study the performance of the algorithm for a few representative examples,
including top-quark pair production and gluon scattering into three- and
four-gluon final states.
Subject
General Physics and Astronomy
Cited by
65 articles.
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