混淆矩阵
人工智能
阿达布思
计算机科学
支持向量机
机器学习
随机森林
假阳性悖论
分类器(UML)
精确性和召回率
决策树
模式识别(心理学)
数据挖掘
作者
Jino Mathew,Rohit Kshirsagar,Dzariff Zainal Abidin,James Griffin,Stratis Kanarachos,Jithin James,Miltiadis Alamaniotis,Michael E. Fitzpatrick
标识
DOI:10.1038/s41598-023-36832-8
摘要
Abstract The detection of illicit radiological materials is critical to establishing a robust second line of defence in nuclear security. Neutron-capture prompt-gamma activation analysis (PGAA) can be used to detect multiple radioactive materials across the entire Periodic Table. However, long detection times and a high rate of false positives pose a significant hindrance in the deployment of PGAA-based systems to identify the presence of illicit substances in nuclear forensics. In the present work, six different machine-learning algorithms were developed to classify radioactive elements based on the PGAA energy spectra. The model performance was evaluated using standard classification metrics and trend curves with an emphasis on comparing the effectiveness of algorithms that are best suited for classifying imbalanced datasets. We analyse the classification performance based on Precision, Recall, F1-score, Specificity, Confusion matrix, ROC-AUC curves, and Geometric Mean Score (GMS) measures. The tree-based algorithms (Decision Trees, Random Forest and AdaBoost) have consistently outperformed Support Vector Machine and K-Nearest Neighbours. Based on the results presented, AdaBoost is the preferred classifier to analyse data containing PGAA spectral information due to the high recall and minimal false negatives reported in the minority class.
科研通智能强力驱动
Strongly Powered by AbleSci AI