Statistical Nuclear Spectroscopy with $q$-normal and bivariate $q$-normal distributions and $q$-Hermite polynomials
V.K.B. Kota, Manan Vyas

TL;DR
This paper introduces a novel approach to statistical nuclear spectroscopy using $q$-normal and bivariate $q$-normal distributions, along with $q$-Hermite polynomials, to better model nuclear state densities and transition strengths.
Contribution
It develops a new framework for nuclear spectroscopy based on $q$-normal distributions, extending traditional Gaussian models with bounded distributions and associated polynomials.
Findings
$q$-normal distributions better fit nuclear density data.
Formulations for level densities and transition strengths using $q$-Hermite polynomials.
Enhanced modeling of nuclear properties with bounded distributions.
Abstract
Statistical nuclear spectroscopy (also called spectral distribution method), introduced by J.B. French in late 60's and developed in detail in the later years by his group and many other groups, is based on the Gaussian forms for the state (eigenvalue) and transition strength densities in shell model spaces with their extension to partial densities defined over shell model subspaces. The Gaussian forms have their basis in embedded random matrix ensembles with nuclear Hamiltonians consisting of a mean-field one-body part and a residual two-body part. However, following the recent random matrix results for the so called Sachdev-Ye-Kitaev model due to Verbaaarschot et al, embedded random matrix ensembles with -body interactions are re-examined and it is shown that the density of states, transition strength densities and strength functions (partial densities) in fact follow more closely…
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Taxonomy
TopicsMathematical functions and polynomials · Financial Risk and Volatility Modeling · Statistical Distribution Estimation and Applications
