Department of Electrical Engineering and Computer Science, Florida Atlantic University, 777 Glades Road, Boca Raton, FL 33431, USA.
College of Computer, Najran University, Najran 61441, Saudi Arabia.
Sensors (Basel). 2024 Sep 13;24(18):5937. doi: 10.3390/s24185937.
This study investigates the efficacy of machine learning models for intrusion detection in the Internet of Medical Things, aiming to enhance cybersecurity defenses and protect sensitive healthcare data. The analysis focuses on evaluating the performance of ensemble learning algorithms, specifically Stacking, Bagging, and Boosting, using Random Forest and Support Vector Machines as base models on the WUSTL-EHMS-2020 dataset. Through a comprehensive examination of performance metrics such as accuracy, precision, recall, and F1-score, Stacking demonstrates exceptional accuracy and reliability in detecting and classifying cyber attack incidents with an accuracy rate of 98.88%. Bagging is ranked second, with an accuracy rate of 97.83%, while Boosting yielded the lowest accuracy rate of 88.68%.
本研究旨在通过机器学习模型提高医疗物联网的入侵检测效率,以加强网络安全防御并保护敏感的医疗数据。分析重点评估了集成学习算法的性能,特别是 Stacking、Bagging 和 Boosting,使用随机森林和支持向量机作为基础模型,对 WUSTL-EHMS-2020 数据集进行了分析。通过对准确性、精度、召回率和 F1 分数等性能指标的综合评估,Stacking 在检测和分类网络攻击事件方面表现出了卓越的准确性和可靠性,准确率为 98.88%。Bagging 排名第二,准确率为 97.83%,而 Boosting 的准确率最低,为 88.68%。