Poster
in
Workshop: NeurIPS 2024 Workshop: Machine Learning and the Physical Sciences
Data-Driven Reweighting for Monte Carlo Simulations
Ahmed Youssef · Christian Bierlich · Philip Ilten · Tony Menzo · Stephen Mrenna · Manuel Szewc · Michael K. Wilkinson · Jure Zupan
Abstract:
This paper introduces a novel method for extracting a fragmentation model directly from experimental data without requiring an explicit parametric form, called Histories and Observables for Monte-Carlo Event Reweighting (HOMER). The method consists of three steps: the training of a classifier between simulation and data, the inference of single fragmentation weights, and the calculation of the weight for the full hadronization chain. We illustrate the use of HOMER on a simplified hadronization problem, a $q\bar{q}$ string fragmenting into pions, and extract a modified Lund string fragmentation function $f(z)$ from binned experimental data.
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