English

Extrapolation to infinite model space of no-core shell model calculations using machine learning

Nuclear Theory 2025-12-22 v2 Machine Learning Computational Physics

Abstract

An ensemble of neural networks is employed to extrapolate no-core shell model (NCSM) results to infinite model space for light nuclei. We present a review of our neural network extrapolations of the NCSM results obtained with the Daejeon16 NN interaction in different model spaces and with different values of the NCSM basis parameter Ω\hbar\Omega for energies of nuclear states and root-mean-square (rms) radii of proton, neutron and matter distributions in light nuclei. The method yields convergent predictions with quantifiable uncertainties. Ground-state energies for 6^{6}Li, 6^{6}He, and the unbound 6^{6}Be, as well as the excited (3+,0)(3^{+},0) and (0+,1)(0^{+},1) states of 6^{6}Li, are obtained within a few hundred keV of experiment. The extrapolated radii of bound states converge well. In contrast, radii of unbound states in 6^{6}Be and 6^{6}Li do not stabilize.

Keywords

Cite

@article{arxiv.2511.05061,
  title  = {Extrapolation to infinite model space of no-core shell model calculations using machine learning},
  author = {Aleksandr Mazur and Roman Sharypov and Andrey Shirokov},
  journal= {arXiv preprint arXiv:2511.05061},
  year   = {2025}
}

Comments

9 pages, 3 figures

R2 v1 2026-07-01T07:25:48.437Z