Federated learning-based intrusion detection system for the internet of things using unsupervised and supervised deep learning models

Babatunde Olanrewaju-George , Bernardi Pranggono
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Abstract

The adoption of the Internet of Things (IoT) in our technology-driven society is hindered by security and data privacy challenges. To address these issues, Artificial Intelligence (AI) techniques such as Machine Learning (ML) and Deep Learning (DL) can be applied to build Intrusion Detection Systems (IDS) that help securing IoT networks. Federated Learning (FL) is a decentralized approach that can enhance performance and privacy of the data by training IDS on individual connected devices. This study proposes the use of unsupervised and supervised DL models trained via FL to develop IDS for IoT devices. The performance of FL-trained models is compared to models trained via non-FL using the N-BaIoT dataset of nine IoT devices. To improve the accuracy of DL models, a randomized search hyperparameter optimization is performed. Various performance metrics are used to evaluate the prediction results. The results indicate that the unsupervised AutoEncoder (AE) model trained via FL is the best overall in terms of all metrics, based on testing both FL and non-FL trained models on all nine IoT devices.

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使用无监督和有监督深度学习模型的基于联合学习的物联网入侵检测系统
在技术驱动的社会中,物联网(IoT)的应用受到了安全和数据隐私挑战的阻碍。为了解决这些问题,机器学习(ML)和深度学习(DL)等人工智能(AI)技术可用于构建入侵检测系统(IDS),帮助确保物联网网络的安全。联合学习(FL)是一种分散式方法,可通过在单个联网设备上训练 IDS 来提高性能和数据隐私。本研究建议使用通过 FL 训练的无监督和有监督 DL 模型,为物联网设备开发 IDS。使用由九个物联网设备组成的 N-BaIoT 数据集,将 FL 训练模型的性能与非 FL 训练模型的性能进行了比较。为了提高 DL 模型的准确性,进行了随机搜索超参数优化。各种性能指标被用来评估预测结果。结果表明,基于在所有九个物联网设备上测试 FL 和非 FL 训练的模型,通过 FL 训练的无监督自动编码器(AE)模型在所有指标方面都是最好的。
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