Machine Learning Nuclear Masses for the Astrophysical r-process
ORAL · Invited
Abstract
Modeling nuclear masses, particularly for nuclei far from stability, remains a key objective in nuclear physics. One contemporary approach is machine learning which trains on experimental data, but can suffer large errors when extrapolating toward neutron-rich species. In nature, such masses shape observables for the rapid neutron capture process (r-process), which in principle could inform ML models. Here we introduce a multi-objective optimization approach using the Pareto Front algorithm. We show that this technique, capable of identifying models which generate r-process abundances aligning with both Solar and stellar data, is a promising method to select ML models with reliable extrapolation power.
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Publication: preprint: arXiv:2506.06464
Presenters
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Mengke Li
University of California, Berkeley
Authors
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Mengke Li
University of California, Berkeley
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Matthew R Mumpower
Los Alamos National Laboratory (LANL)
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Nicole Vassh
TRIUMF
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William S Porter
Notre Dame, University of Notre Dame
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Rebecca A Surman
University of Notre Dame