论文标题
通过机器学习预测β衰减能量
Predicting Beta Decay Energy with Machine Learning
论文作者
论文摘要
$q_β$是表征不稳定核的最重要因素之一,因为它可以更好地理解核行为和重原子的起源。最近,机器学习方法已被证明是提高预测各种原子能(例如能量,原子电荷,体积等)精度的强大工具。尽管如此,这些方法通常被用作黑匣子,不允许对所分析现象进行揭示。在这里,通过机器学习模型的合奏,$β$ -DECAY能量的最先进的精度优于实验数据。实施的解释性工具是为了消除黑匣子的关注,可以将不确定性和原子数确定为预测$q_β$能量的最相关特征。此外,物理知识的功能添加改进了核结构理论模型的鲁棒性和提高的重要特征。
$Q_β$ 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, 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 $β$-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 uncertainty and atomic number as the most relevant characteristics to predict $Q_β$ energies. Furthermore, physics-informed feature addition improved models' robustness and raised vital characteristics of theoretical models of the nuclear structure.