Deep Autoencoder-Based Integrated Model for Anomaly Detection and Efficient Feature Extraction in IoT Networks

K. Alaghbari, Heng-Siong Lim, M. Saad, Yik Seng Yong
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Abstract

The intrusion detection system (IDS) is a promising technology for ensuring security against cyber-attacks in internet-of-things networks. In conventional IDS, anomaly detection and feature extraction are performed by two different models. In this paper, we propose a new integrated model based on deep autoencoder (AE) for anomaly detection and feature extraction. Firstly, AE is trained based on normal network traffic and used later to detect anomalies. Then, the trained AE model is employed again to extract useful low-dimensional features for anomalous data without the need for a feature extraction training stage, which is required by other methods such as principal components analysis (PCA) and linear discriminant analysis (LDA). After that, the extracted features are used by a machine learning (ML) or deep learning (DL) classifier to determine the type of attack (multi-classification). The performance of the proposed unified approach was evaluated on real IoT datasets called N-BaIoT and MQTTset, which contain normal and malicious network traffics. The proposed AE was compared with other popular anomaly detection techniques such as one-class support vector machine (OC-SVM) and isolation forest (iForest), in terms of performance metrics (accuracy, precision, recall, and F1-score), and execution time. AE was found to identify attacks better than OC-SVM and iForest with fast detection time. The proposed feature extraction method aims to reduce the computation complexity while maintaining the performance metrics of the multi-classifier models as much as possible compared to their counterparts. We tested the model with different ML/DL classifiers such as decision tree, random forest, deep neural network (DNN), conventional neural network (CNN), and hybrid CNN with long short-term memory (LSTM). The experiment results showed the capability of the proposed model to simultaneously detect anomalous events and reduce the dimensionality of the data.
基于深度自编码器的物联网网络异常检测与高效特征提取集成模型
在物联网网络中,入侵检测系统(IDS)是一种很有前途的安全防御技术。在传统的入侵检测中,异常检测和特征提取是由两个不同的模型来完成的。本文提出了一种新的基于深度自编码器(AE)的异常检测和特征提取集成模型。首先,基于正常网络流量训练声发射,然后用于异常检测。然后,再次使用训练好的AE模型提取异常数据的有用低维特征,而不需要主成分分析(PCA)和线性判别分析(LDA)等其他方法所需要的特征提取训练阶段。之后,机器学习(ML)或深度学习(DL)分类器使用提取的特征来确定攻击类型(多分类)。在包含正常和恶意网络流量的真实物联网数据集N-BaIoT和MQTTset上对所提出的统一方法的性能进行了评估。在性能指标(准确率、精密度、召回率和f1分数)和执行时间方面,将所提出的AE与其他流行的异常检测技术(如一类支持向量机(OC-SVM)和隔离森林(ifforest))进行了比较。AE识别攻击优于OC-SVM和ifforest,检测时间快。所提出的特征提取方法旨在降低计算复杂度的同时尽可能保持多分类器模型相对于同类模型的性能指标。我们使用不同的ML/DL分类器,如决策树、随机森林、深度神经网络(DNN)、传统神经网络(CNN)和混合CNN与长短期记忆(LSTM)对模型进行了测试。实验结果表明,该模型能够同时检测异常事件和降低数据维数。
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