Hardening machine learning denial of service (DoS) defences against adversarial attacks in IoT smart home networks

被引:48
|
作者
Anthi, Eirini [1 ]
Williams, Lowri [1 ]
Laved, Amir [1 ]
Burnap, Pete [1 ]
机构
[1] Cardiff Univ, Sch Comp Sci Informat, Cardiff, Wales
基金
英国工程与自然科学研究理事会;
关键词
Internet of things (IoT); Smart homes; Networking; Supervised machine learning; Adversarial machine learning; Attack detection; Intrusion detection systems; INTERNET; THINGS;
D O I
10.1016/j.cose.2021.102352
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Machine learning based Intrusion Detection Systems (IDS) allow flexible and efficient automated detection of cyberattacks in Internet of Things (IoT) networks. However, this has also created an additional attack vector; the machine learning models which support the IDS's decisions may also be subject to cyberattacks known as Adversarial Machine Learning (AML). In the context of IoT, AML can be used to manipulate data and network traffic that traverse through such devices. These perturbations increase the confusion in the decision boundaries of the machine learning classifier, where malicious network packets are often miss-classified as being benign. Consequently, such errors are bypassed by machine learning based detectors, which increases the potential of significantly delaying attack detection and further consequences such as personal information leakage, damaged hardware, and financial loss. Given the impact that these attacks may have, this paper proposes a rule-based approach towards generating AML attack samples and explores how they can be used to target a range of supervised machine learning classifiers used for detecting Denial of Service attacks in an IoT smart home network. The analysis explores which DoS packet features to perturb and how such adversarial samples can support increasing the robustness of supervised models using adversarial training. The results demonstrated that the performance of all the top performing classifiers were affected, decreasing a maximum of 47.2 percentage points when adversarial samples were present. Their performances improved following adversarial training, demonstrating their robustness towards such attacks. Crown Copyright (c) 2021 Published by Elsevier Ltd. This is an open access article under the CC BY license ( http://creativecommons.org/licenses/by/4.0/ )
引用
收藏
页数:12
相关论文
共 50 条
  • [21] Detection of Security Attacks in Industrial IoT Networks: A Blockchain and Machine Learning Approach
    Vargas, Henry
    Lozano-Garzon, Carlos
    Montoya, German A.
    Donoso, Yezid
    ELECTRONICS, 2021, 10 (21)
  • [22] Denial of Service Attacks: Detecting the Frailties of Machine Learning Algorithms in the Classification Process
    Frazao, Ivo
    Abreu, Pedro Henriques
    Cruz, Tiago
    Araujo, Helder
    Simoes, Paulo
    CRITICAL INFORMATION INFRASTRUCTURES SECURITY (CRITIS 2018), 2019, 11260 : 230 - 235
  • [23] Detection of Distributed Denial of Service (DDoS) Attacks in IOT Based Monitoring System of Banking Sector Using Machine Learning Models
    Islam, Umar
    Muhammad, Ali
    Mansoor, Rafiq
    Hossain, Md Shamim
    Ahmad, Ijaz
    Eldin, Elsayed Tag
    Khan, Javed Ali
    Rehman, Ateeq Ur
    Shafiq, Muhammad
    SUSTAINABILITY, 2022, 14 (14)
  • [24] Adversarial Machine Learning Attacks against Intrusion Detection Systems: A Survey on Strategies and Defense
    Alotaibi, Afnan
    Rassam, Murad A.
    FUTURE INTERNET, 2023, 15 (02)
  • [25] An Adversarial Machine Learning Model Against Android Malware Evasion Attacks
    Chen, Lingwei
    Hou, Shifu
    Ye, Yanfang
    Chen, Lifei
    WEB AND BIG DATA, 2017, 10612 : 43 - 55
  • [26] A Network Security Classifier Defense: Against Adversarial Machine Learning Attacks
    De Lucia, Michael J.
    Cotton, Chase
    PROCEEDINGS OF THE 2ND ACM WORKSHOP ON WIRELESS SECURITY AND MACHINE LEARNING, WISEML 2020, 2020, : 67 - 73
  • [27] Detection of DoS Attacks for IoT in Information-Centric Networks Using Machine Learning: Opportunities, Challenges, and Future Research Directions
    Bukhowah, Rawan
    Aljughaiman, Ahmed
    Rahman, M. M. Hafizur
    ELECTRONICS, 2024, 13 (06)
  • [28] Design of Reliable IoT Systems With Deep Learning to Support Resilient Demand Side Management in Smart Grids Against Adversarial Attacks
    Elsisi, Mahmoud
    Su, Chun-Lien
    Ali, Mahmoud N.
    IEEE TRANSACTIONS ON INDUSTRY APPLICATIONS, 2024, 60 (02) : 2095 - 2106
  • [29] Adversarial Training Against Adversarial Attacks for Machine Learning-Based Intrusion Detection Systems
    Haroon, Muhammad Shahzad
    Ali, Husnain Mansoor
    CMC-COMPUTERS MATERIALS & CONTINUA, 2022, 73 (02): : 3513 - 3527
  • [30] Machine Learning Approaches for Combating Distributed Denial of Service Attacks in Modern Networking Environments
    Aljuhani, Ahamed
    IEEE ACCESS, 2021, 9 (42236-42264): : 42236 - 42264