6–10 Nov 2023
DESY
Europe/Zurich timezone

The MadNIS Reloaded

7 Nov 2023, 15:15
15m
Seminarraum 4a/b (DESY)

Seminarraum 4a/b

DESY

Speaker

Theo Heimel (Heidelberg University)

Description

Theory predictions for the LHC require precise numerical phase-space integration and generation of unweighted events. We combine machine-learned multi-channel weights with a normalizing flow for importance sampling to improve classical methods for numerical integration. By integrating buffered training for potentially expensive integrands, VEGAS initialization, symmetry-aware channels, and stratified training, we elevate the performance in both efficiency and accuracy. We empirically validate these enhancements through rigorous tests on diverse LHC processes, including VBS and W+jets.

Authors

Prof. Fabio Maltoni (Universite Catholique de Louvain (UCL) (BE) and Università di Bologna) Olivier Mattelaer (UCLouvain) Ramon Winterhalder (UC Louvain) Theo Heimel (Heidelberg University) Tilman Plehn

Presentation materials