Intrusion Detection System Using Feature Extraction with Machine Learning Algorithms in IoT

Dhiaa Musleh, Meera Alotaibi, F. Alhaidari, Atta Rahman, R. Mohammad
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引用次数: 14

Abstract

With the continuous increase in Internet of Things (IoT) device usage, more interest has been shown in internet security, specifically focusing on protecting these vulnerable devices from malicious traffic. Such threats are difficult to distinguish, so an advanced intrusion detection system (IDS) is becoming necessary. Machine learning (ML) is one of the promising techniques as a smart IDS in different areas, including IoT. However, the input to ML models should be extracted from the IoT environment by feature extraction models, which play a significant role in the detection rate and accuracy. Therefore, this research aims to introduce a study on ML-based IDS in IoT, considering different feature extraction algorithms with several ML models. This study evaluated several feature extractors, including image filters and transfer learning models, such as VGG-16 and DenseNet. Additionally, several machine learning algorithms, including random forest, K-nearest neighbors, SVM, and different stacked models were assessed considering all the explored feature extraction algorithms. The study presented a detailed evaluation of all combined models using the IEEE Dataport dataset. Results showed that VGG-16 combined with stacking resulted in the highest accuracy of 98.3%.
物联网中基于特征提取和机器学习算法的入侵检测系统
随着物联网(IoT)设备使用的不断增加,人们对互联网安全越来越感兴趣,特别是关注保护这些易受攻击的设备免受恶意流量的侵害。这些威胁难以识别,因此需要一个先进的入侵检测系统(IDS)。机器学习(ML)是包括物联网在内的不同领域的智能IDS的有前途的技术之一。然而,ML模型的输入需要通过特征提取模型从物联网环境中提取出来,这对检测率和准确率起着重要的作用。因此,本研究旨在对物联网中基于机器学习的IDS进行研究,考虑不同机器学习模型的不同特征提取算法。本研究评估了几种特征提取器,包括图像过滤器和迁移学习模型,如VGG-16和DenseNet。此外,考虑到所有探索的特征提取算法,评估了几种机器学习算法,包括随机森林、k近邻、支持向量机和不同的堆叠模型。该研究使用IEEE Dataport数据集对所有组合模型进行了详细评估。结果表明,VGG-16与叠加相结合,准确率最高,达到98.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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