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

被引:5
作者
Zhang, Yixuan [1 ]
Suleiman, Basem [1 ,2 ]
Alibasa, Muhammad Johan [3 ]
Farid, Farnaz [4 ]
机构
[1] Univ Sydney, Sydney, NSW 2006, Australia
[2] Univ New South Wales, Sydney, NSW 2052, Australia
[3] Telkom Univ, Sch Comp, Bandung 40257, Indonesia
[4] Western Sydney Univ, Penrith, NSW 2751, Australia
关键词
Smart home environment; Cyber attack; Anomaly detection; Federated learning; Internet of things (IoT); Machine learning; INTRUSION DETECTION; DEVICES;
D O I
10.1007/s10922-023-09782-9
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
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.
引用
收藏
页数:27
相关论文
共 39 条
[11]  
Brownlee J., 2019, Machine Learning Mastery
[12]  
Brownlee J., 2021, Failure of classification accuracy for imbalanced class distributions
[13]   MEASUREMENT OF THE FALSE POSITIVE RATE IN A SCREENING-PROGRAM FOR HUMAN IMMUNODEFICIENCY VIRUS-INFECTIONS [J].
BURKE, DS ;
BRUNDAGE, JF ;
REDFIELD, RR ;
DAMATO, JJ ;
SCHABLE, CA ;
PUTMAN, P ;
VISINTINE, R ;
KIM, HI .
NEW ENGLAND JOURNAL OF MEDICINE, 1988, 319 (15) :961-964
[14]   Evaluating Federated Learning for intrusion detection in Internet of Things: Review and challenges [J].
Campos, Enrique Marmol ;
Saura, Pablo Fernandez ;
Gonzalez-Vidal, Aurora ;
Hernandez-Ramos, Jose L. ;
Bernabe, Jorge Bernal ;
Baldini, Gianmarco ;
Skarmeta, Antonio .
COMPUTER NETWORKS, 2022, 203
[15]   An investigation of the false discovery rate and the misinterpretation of p-values [J].
Colquhoun, David .
ROYAL SOCIETY OPEN SCIENCE, 2014, 1 (03)
[16]  
David R., 2021, P MACHINE LEARNING S, VVolume 3, P800, DOI DOI 10.48550/ARXIV.2010.08678
[17]   Network-Level Security for the Internet of Things: Opportunities and Challenges [J].
Gharakheili, Hassan Habibi ;
Sivanathan, Arunan ;
Hamza, Ayyoob ;
Sivaraman, Vijay .
COMPUTER, 2019, 52 (08) :58-62
[18]  
Gour L., 2022, P INT C EMERGING TRE, DOI [10.4108/eai.16-4-2022.2318146, DOI 10.4108/EAI.16-4-2022.2318146]
[19]   Detecting Volumetric Attacks on IoT Devices via SDN-Based Monitoring of MUD Activity [J].
Hamza, Ayyoob ;
Gharakheili, Hassan Habibi ;
Benson, Theophilus A. ;
Sivaraman, Vijay .
SOSR '19: PROCEEDINGS OF THE 2019 ACM SYMPOSIUM ON SDN RESEARCH, 2019, :36-48
[20]  
Kundu A, 2022, Arxiv, DOI arXiv:2009.06303