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Reweighting Monte Carlo predictions and automated fragmentation variations in Pythia 8

Bierlich, Christan LU ; Ilten, Philip ; Menzo, Tony ; Mrenna, Stephen ; Szewc, Manuel ; Wilkinson, Michael K. ; Youssef, Ahmed and Zupan, Jure (2024) In SciPost Physics 16(5).
Abstract

This work reports on a method for uncertainty estimation in simulated collider-event predictions. The method is based on a Monte Carlo-veto algorithm, and extends previous work on uncertainty estimates in parton showers by including uncertainty estimates for the Lund string-fragmentation model. This method is advantageous from the perspective of simulation costs: a single ensemble of generated events can be reinterpreted as though it was obtained using a different set of input parameters, where each event now is accompanied with a corresponding weight. This allows for a robust exploration of the uncertainties arising from the choice of input model parameters, without the need to rerun full simulation pipelines for each input parameter... (More)

This work reports on a method for uncertainty estimation in simulated collider-event predictions. The method is based on a Monte Carlo-veto algorithm, and extends previous work on uncertainty estimates in parton showers by including uncertainty estimates for the Lund string-fragmentation model. This method is advantageous from the perspective of simulation costs: a single ensemble of generated events can be reinterpreted as though it was obtained using a different set of input parameters, where each event now is accompanied with a corresponding weight. This allows for a robust exploration of the uncertainties arising from the choice of input model parameters, without the need to rerun full simulation pipelines for each input parameter choice. Such explorations are important when determining the sensitivities of precision physics measurements. Accompanying code is available at gitlab.com/uchep/mlhad-weights-validation.

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author
; ; ; ; ; ; and
organization
publishing date
type
Contribution to journal
publication status
published
subject
in
SciPost Physics
volume
16
issue
5
article number
134
publisher
SciPost
external identifiers
  • scopus:85196118454
ISSN
2542-4653
DOI
10.21468/SCIPOSTPHYS.16.5.134
language
English
LU publication?
yes
id
af2e0cd7-76dd-4409-a3c1-fa60ecb76ba3
date added to LUP
2024-08-21 15:12:29
date last changed
2025-04-04 15:38:58
@article{af2e0cd7-76dd-4409-a3c1-fa60ecb76ba3,
  abstract     = {{<p>This work reports on a method for uncertainty estimation in simulated collider-event predictions. The method is based on a Monte Carlo-veto algorithm, and extends previous work on uncertainty estimates in parton showers by including uncertainty estimates for the Lund string-fragmentation model. This method is advantageous from the perspective of simulation costs: a single ensemble of generated events can be reinterpreted as though it was obtained using a different set of input parameters, where each event now is accompanied with a corresponding weight. This allows for a robust exploration of the uncertainties arising from the choice of input model parameters, without the need to rerun full simulation pipelines for each input parameter choice. Such explorations are important when determining the sensitivities of precision physics measurements. Accompanying code is available at gitlab.com/uchep/mlhad-weights-validation.</p>}},
  author       = {{Bierlich, Christan and Ilten, Philip and Menzo, Tony and Mrenna, Stephen and Szewc, Manuel and Wilkinson, Michael K. and Youssef, Ahmed and Zupan, Jure}},
  issn         = {{2542-4653}},
  language     = {{eng}},
  number       = {{5}},
  publisher    = {{SciPost}},
  series       = {{SciPost Physics}},
  title        = {{Reweighting Monte Carlo predictions and automated fragmentation variations in Pythia 8}},
  url          = {{http://dx.doi.org/10.21468/SCIPOSTPHYS.16.5.134}},
  doi          = {{10.21468/SCIPOSTPHYS.16.5.134}},
  volume       = {{16}},
  year         = {{2024}},
}