THE EUROPEAN PHYSICAL JOURNAL. C, PARTICLES AND FIELDS
Abstract
Data analyses in particle physics rely on an accurate simulation of particle collisions and a detailed simula
tion of detector effects to extract physics knowledge from the recorded data. Event generators together with a geant
based simulation of the detectors are used to produce large samples of simulated events for analysis by the LHC experi
ments. These simulations come at a high computational cost, where the detector simulation and reconstruction algorithms
have the largest CPU demands. This article describes how machine-learning (ML) techniques are used to reweight sim
ulated samples obtained with a given set of parameters to samples with different parameters or samples obtained from
entirely different simulation programs. The ML reweighting method avoids the need for simulating the detector response
multiple times by incorporating the relevant information in a single sample through event weights. Results are presented
for reweightingtomodelvariationsandhigher-ordercalculations in simulated top quark pair production at the LHC. This
ML-based reweighting is an important element of the future computing model of the CMS experiment and will facilitate
precision measurements at the High-Luminosity LHC.