Resonance Statistics -Informed Fitting Applied to Automated Cross Section Evaluation
Abstract
This work investigates the use of resonance statistics for resonance evaluation to inform spin group assignment and an alternative fitting objective function beyond the commonly used chi-squared statistic. Resonance statistics -informed methods are applied to the automated resonance fitting framework, developed by N. Walton et al. In this automated framework, the utility of resonance statistics is largely unexplored. The new resonance statistics -informed spin group shuffling algorithm reduces spin group frequency bias seen in the base fitting algorithm. Although resonance statistics -informed optimization produces negligible changes in pointwise cross section agreement, it significantly improves consistency with Wigner level-spacing statistics and stabilizes the fitted resonance density in the presence of model imperfections.
Cite
@article{arxiv.2604.25947,
title = {Resonance Statistics -Informed Fitting Applied to Automated Cross Section Evaluation},
author = {William Fritsch and Noah Walton and Justin Loring and Jacob Forbes and Oleksii Zivenko and Aaron Clark and Elan Park-Bernstein and Vladimir Sobes},
journal= {arXiv preprint arXiv:2604.25947},
year = {2026}
}