StratDef: Strategic defense against adversarial attacks in ML-based malware detection

被引:2
作者
Rashid, Aqib [1 ]
Such, Jose [1 ]
机构
[1] Kings Coll London, Dept Informat, London WC2R 2LS, England
关键词
Adversarial machine learning; Adversarial examples; Malware detection; Machine learning security; Deep learning;
D O I
10.1016/j.cose.2023.103459
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Over the years, most research towards defenses against adversarial attacks on machine learning models has been in the image recognition domain. The ML-based malware detection domain has received less attention despite its importance. Moreover, most work exploring these defenses has focused on several methods but with no strategy when applying them. In this paper, we introduce StratDef, which is a strategic defense system based on a moving target defense approach. We overcome challenges related to the systematic construction, selection, and strategic use of models to maximize adversarial robustness. StratDef dynamically and strategically chooses the best models to increase the uncertainty for the attacker while minimizing critical aspects in the adversarial ML domain, like attack transferability. We provide the first comprehensive evaluation of defenses against adversarial attacks on machine learning for malware detection, where our threat model explores different levels of threat, attacker knowledge, capabilities, and attack intensities. We show that StratDef performs better than other defenses even when facing the peak adversarial threat. We also show that, of the existing defenses, only a few adversariallytrained models provide substantially better protection than just using vanilla models but are still outperformed by StratDef.
引用
收藏
页数:18
相关论文
共 50 条
  • [31] Robustness of Image-based Android Malware Detection Under Adversarial Attacks
    Darwaish, Asim
    Nait-Abdesselam, Farid
    Titouna, Chafiq
    Sattar, Sumera
    IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS (ICC 2021), 2021,
  • [32] TENSORSHIELD: Tensor-based Defense Against Adversarial Attacks on Images
    Entezari, Negin
    Papalexakis, Evangelos E.
    2022 IEEE MILITARY COMMUNICATIONS CONFERENCE (MILCOM), 2022,
  • [33] Defense against Adversarial Attacks in Image Recognition Based on Multilayer Filters
    Wang, Mingde
    Liu, Zhijing
    APPLIED SCIENCES-BASEL, 2024, 14 (18):
  • [34] A novel method for improving the robustness of deep learning-based malware detectors against adversarial attacks
    Shaukat, Kamran
    Luo, Suhuai
    Varadharajan, Vijay
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2022, 116
  • [35] Robust Android Malware Detection System Against Adversarial Attacks Using Q-Learning
    Hemant Rathore
    Sanjay K. Sahay
    Piyush Nikam
    Mohit Sewak
    Information Systems Frontiers, 2021, 23 : 867 - 882
  • [36] Assessing Transferability of Adversarial Examples against Malware Detection Classifiers
    Wang, Yixiang
    Liu, Jiqiang
    Chang, Xiaolin
    CF '19 - PROCEEDINGS OF THE 16TH ACM INTERNATIONAL CONFERENCE ON COMPUTING FRONTIERS, 2019, : 211 - 214
  • [37] Adversarial Attacks Against Deep Learning-Based Network Intrusion Detection Systems and Defense Mechanisms
    Zhang, Chaoyun
    Costa-Perez, Xavier
    Patras, Paul
    IEEE-ACM TRANSACTIONS ON NETWORKING, 2022, 30 (03) : 1294 - 1311
  • [38] Robust Android Malware Detection System Against Adversarial Attacks Using Q-Learning
    Rathore, Hemant
    Sahay, Sanjay K.
    Nikam, Piyush
    Sewak, Mohit
    INFORMATION SYSTEMS FRONTIERS, 2021, 23 (04) : 867 - 882
  • [39] MLxPack: Investigating the Effects of Packers on ML-based Malware Detection Systems Using Static and Dynamic Traits
    Sun, Qirui
    Abuhamad, Mohammed
    Abdukhamidov, Eldor
    Chan-Tin, Eric
    Abuhmed, Tamer
    CYSSS'22: PROCEEDINGS OF THE 1ST WORKSHOP ON CYBERSECURITY AND SOCIAL SCIENCES, 2022, : 11 - 18
  • [40] Feature-Based Adversarial Attacks Against Machine Learnt Mobile Malware Detectors
    Shahpasand, Maryam
    Hamey, Leonard
    Kaafar, Mohamed Ali
    Vatsalan, Dinusha
    2020 30TH INTERNATIONAL TELECOMMUNICATION NETWORKS AND APPLICATIONS CONFERENCE (ITNAC), 2020, : 135 - 142