2024
DOI: 10.1103/physrevc.109.064322
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Nuclear mass predictions using machine learning models

Esra Yüksel,
Derya Soydaner,
Hüseyin Bahtiyar

Abstract: The exploration of nuclear mass or binding energy, a fundamental property of atomic nuclei, remains at the forefront of nuclear physics research due to limitations in experimental studies and uncertainties in model calculations, particularly when moving away from the stability line. In this work, we employ two machine learning (ML) models, support vector regression (SVR) and Gaussian process regression (GPR), to assess their performance in predicting nuclear mass excesses using available experimental data and … Show more

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