Privacy-Aware Anomaly Detection in IoT Environments using FedGroup: A Group-Based Federated Learning Approach

IF 4.1 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Yixuan Zhang, Basem Suleiman, Muhammad Johan Alibasa, Farnaz Farid
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Abstract

The popularity of Internet of Things (IoT) devices in smart homes has raised significant concerns regarding data security and privacy. Traditional machine learning (ML) methods for anomaly detection often require sharing sensitive IoT data with a central server, posing security and efficiency challenges. In response, this paper introduces FedGroup, a novel Federated Learning (FL) method inspired by FedAvg. FedGroup revolutionizes the central model’s learning process by updating it based on the learning patterns of distinct groups of IoT devices. Our experimental results demonstrate that FedGroup consistently achieves comparable or superior accuracy in anomaly detection when compared to both federated and non-federated learning methods. Additionally, Ensemble Learning (EL) collects intelligence from numerous contributing models, leading to enhanced prediction performance. Furthermore, FedGroup significantly improves the detection of attack types and their details, contributing to a more robust security framework for smart homes. Our approach demonstrates exceptional performance, achieving an accuracy rate of 99.64% with a minimal false positive rate (FPR) of 0.02% in attack type detection, and an impressive 99.89% accuracy in attack type detail detection.

Abstract Image

使用 FedGroup 在物联网环境中进行隐私意识异常检测:基于群组的联合学习方法
智能家居中物联网(IoT)设备的普及引起了人们对数据安全和隐私的极大关注。用于异常检测的传统机器学习(ML)方法通常需要与中央服务器共享敏感的物联网数据,从而带来了安全和效率方面的挑战。为此,本文介绍了 FedGroup,一种受 FedAvg 启发的新型 Federated Learning(FL)方法。FedGroup 根据不同物联网设备组的学习模式对中央模型的学习过程进行更新,从而彻底改变了中央模型的学习过程。我们的实验结果表明,与联合学习方法和非联合学习方法相比,FedGroup 在异常检测方面始终保持着相当或更高的准确率。此外,集合学习(EL)从众多贡献模型中收集情报,从而提高了预测性能。此外,FedGroup 还大大提高了对攻击类型及其细节的检测能力,为智能家居提供了更强大的安全框架。我们的方法表现出卓越的性能,在攻击类型检测方面,准确率达到 99.64%,误报率 (FPR) 仅为 0.02%,在攻击类型细节检测方面,准确率达到 99.89%,令人印象深刻。
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来源期刊
CiteScore
7.60
自引率
16.70%
发文量
65
审稿时长
>12 weeks
期刊介绍: Journal of Network and Systems Management, features peer-reviewed original research, as well as case studies in the fields of network and system management. The journal regularly disseminates significant new information on both the telecommunications and computing aspects of these fields, as well as their evolution and emerging integration. This outstanding quarterly covers architecture, analysis, design, software, standards, and migration issues related to the operation, management, and control of distributed systems and communication networks for voice, data, video, and networked computing.
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