Affiliation:
1. Lund University
2. University of Cincinnati
3. Lawrence Berkeley National Laboratory
4. University of California, Berkeley
5. Fermi National Accelerator Laboratory
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.
Funder
Adolph C. and Mary Sprague Miller Institute for Basic Research in Science, University of California Berkeley
Fermilab
Knut och Alice Wallenbergs Stiftelse
National Science Foundation
United States Department of Energy
Cited by
1 articles.
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