Internet of Things (IoT) Security Enhancement Using XGboost Machine Learning Techniques

Dana F. Doghramachi, Siddeeq Y. Ameen
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Abstract

The rapid adoption of the Internet of Things (IoT) across industries has revolutionized daily life by providing essential services and leisure activities. However, the inadequate software protection in IoT devices exposes them to cyberattacks with severe consequences. Intrusion Detection Systems (IDS) are vital in mitigating these risks by detecting abnormal network behavior and monitoring safe network traffic. The security research community has shown particular interest in leveraging Machine Learning (ML) approaches to develop practical IDS applications for general cyber networks and IoT environments. However, most available datasets related to Industrial IoT suffer from imbalanced class distributions. This study proposes a methodology that involves dataset preprocessing, including data cleaning, encoding, and normalization. The class imbalance is addressed by employing the Synthetic Minority Oversampling Technique (SMOTE) and performing feature reduction using correlation analysis. Multiple ML classifiers, including Logistic Regression, multi-layer perceptron, Decision Trees, Random Forest, and XGBoost, are employed to model IoT attacks. The effectiveness and robustness of the proposed method evaluate using the IoTID20 dataset, which represents current imbalanced IoT scenarios. The results highlight that the XGBoost model, integrated with SMOTE, achieves outstanding attack detection accuracy of 0.99 in binary classification, 0.99 in multi-class classification, and 0.81 in multiple sub-classifications. These findings demonstrate our approach’s significant improvements to attack detection in imbalanced IoT datasets, establishing its superiority over existing IDS frameworks.
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使用XGboost机器学习技术增强物联网(IoT)安全性
物联网(IoT)在各行各业的迅速普及,通过提供基本服务和休闲活动,彻底改变了人们的日常生活。然而,物联网设备的软件保护不足,使其容易受到网络攻击,造成严重后果。入侵检测系统(IDS)通过检测异常网络行为和监控安全网络流量来减轻这些风险。安全研究界对利用机器学习(ML)方法为一般网络和物联网环境开发实际的IDS应用程序特别感兴趣。然而,大多数与工业物联网相关的可用数据集都存在类别分布不平衡的问题。本研究提出了一种涉及数据集预处理的方法,包括数据清理、编码和规范化。采用合成少数过采样技术(SMOTE)和使用相关分析执行特征约简来解决类不平衡问题。多个ML分类器,包括逻辑回归、多层感知器、决策树、随机森林和XGBoost,被用来模拟物联网攻击。使用IoTID20数据集对所提出方法的有效性和鲁棒性进行了评估,该数据集代表了当前不平衡的物联网场景。结果表明,结合SMOTE的XGBoost模型在二元分类、多类分类和多子分类中分别取得了0.99、0.99和0.81的攻击检测准确率。这些发现证明了我们的方法在不平衡物联网数据集中的攻击检测方面的重大改进,确立了其优于现有IDS框架的优势。
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