*Towards a data-driven model of hadronization using normalizing flows

Nov 1, 2023·
Christian Bierlich
,
Phil Ilten
,
Tony Menzo
,
Stephen Mrenna
,
Manuel Szewc
,
Michael K. Wilkinson
,
Ahmed Youssef
,
Jure Zupan
· 0 min read
Abstract
We introduce a model of hadronization based on invertible neural networks that faithfully reproduces a simplified version of the Lund string model for meson hadronization. Additionally, we introduce a new training method for normalizing flows, termed MAGIC, that improves the agreement between simulated and experimental distributions of high-level (macroscopic) observables by adjusting single-emission (microscopic) dynamics. Our results constitute an important step toward realizing a machine-learning based model of hadronization that utilizes experimental data during training. Finally, we demonstrate how a Bayesian extension to this normalizing-flow architecture can be used to provide analysis of statistical and modeling uncertainties on the generated observable distributions.
Type
Publication
Submitted to SciPost Physics