Litcius/Paper detail

Predicting <mml:math xmlns:mml="http://www.w3.org/1998/Math/MathML"><mml:mi>β</mml:mi></mml:math>-decay energy with machine learning

Jose M. Muñoz, Serkan Akkoyun, Zayda P. Reyes, Leonardo A. Pachón

2023Physical review. C19 citationsDOI

Abstract

${Q}_{\ensuremath{\beta}}$ represents one of the most important factors characterizing unstable nuclei, as it can lead to a better understanding of nuclei behavior and the origin of heavy atoms. Recently, machine learning methods have been shown to be a powerful tool to increase accuracy in the prediction of diverse atomic properties such as energies, atomic charges, and volumes, among others. Nonetheless, these methods are often used as a black box not allowing unraveling insights into the phenomena under analysis. Here, the state-of-the-art precision of the $\ensuremath{\beta}$-decay energy on experimental data is outperformed by means of an ensemble of machine-learning models. The explainability tools implemented to eliminate the black box concern allowed to identify proton and neutron numbers as the most relevant characteristics to predict ${Q}_{\ensuremath{\beta}}$ energies. Furthermore, a physics-informed feature addition improved models' robustness and raised vital characteristics of theoretical models of the nuclear structure.

Topics & Concepts

MathematicsArtificial intelligenceComputer scienceNeutrino Physics ResearchRadiation Detection and Scintillator TechnologiesParticle physics theoretical and experimental studies