Biasing Federated Learning With a New Adversarial Graph Attention Network

被引:0
|
作者
Li, Kai [1 ,2 ]
Zheng, Jingjing [3 ]
Ni, Wei [4 ]
Huang, Hailong [5 ]
Lio, Pietro [6 ,7 ]
Dressler, Falko [8 ]
Akan, Ozgur B. [9 ,10 ]
机构
[1] Univ Cambridge, Dept Engn, Internet Everything IoE Grp, Cambridge CB3 0FA, England
[2] Real Time & Embedded Comp Syst Res Ctr CISTER, P-4249015 Porto, Portugal
[3] CISTER Res Ctr, P-4249015 Porto, Portugal
[4] CSIRO, Sydney, NSW 2122, Australia
[5] Hong Kong Polytech Univ, Dept Aeronaut & Aviat Engn, Hung Hom, Hong Kong, Peoples R China
[6] Univ Cambridge, Dept Comp Sci & Technol, Artificial Intelligence Grp, Cambridge CB3 0FA, England
[7] Sapienza Univ Rome, I-00185 Rome, Italy
[8] TU Berlin, Sch Elect Engn & Comp Sci, D-10623 Berlin, Germany
[9] Univ Cambridge, Dept Engn, Div Elect Engn, Internet Everything IoE Grp, Cambridge CB3 0FA, England
[10] Koc Univ, Ctr Next Generat Commun CXC, TR-34450 Istanbul, Turkiye
关键词
Data models; Training; Computational modeling; Servers; Correlation; Federated learning; Computer architecture; Training data; Accuracy; Mobile computing; fairness; adversarial graph attention network; feature correlations; cyberattacks;
D O I
10.1109/TMC.2024.3499371
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Fairness in Federated Learning (FL) is imperative not only for the ethical utilization of technology but also for ensuring that models provide accurate, equitable, and beneficial outcomes across varied user demographics and equipment. This paper proposes a new adversarial architecture, referred to as Adversarial Graph Attention Network (AGAT), which deliberately instigates fairness attacks with an aim to bias the learning process across the FL. The proposed AGAT is developed to synthesize malicious, biasing model updates, where the minimum of Kullback-Leibler (KL) divergence between the user's model update and the global model is maximized. Due to a limited set of labeled input-output biasing data samples, a surrogate model is created, which presents the behavior of a complex malicious model update. Moreover, a graph autoencoder (GAE) is designed within the AGAT architecture, which is trained together with sub-gradient descent to reconstruct manipulatively the correlations of the model updates, and maximize the reconstruction loss while keeping the malicious, biasing model updates undetectable. The proposed AGAT attack is implemented in PyTorch, showing experimentally that AGAT successfully increases the minimum value of KL divergence of benign model updates by 60.9% and bypasses the detection of existing defense models. The source code of the AGAT attack is released on GitHub.
引用
收藏
页码:2407 / 2421
页数:15
相关论文
共 50 条
  • [1] Federated Multitask Learning for Complaint Identification Using Graph Attention Network
    Singh A.
    Chandrasekar S.
    Sen T.
    Saha S.
    IEEE Transactions on Artificial Intelligence, 2024, 5 (03): : 1277 - 1286
  • [2] Graph-Fraudster: Adversarial Attacks on Graph Neural Network-Based Vertical Federated Learning
    Chen, Jinyin
    Huang, Guohan
    Zheng, Haibin
    Yu, Shanqing
    Jiang, Wenrong
    Cui, Chen
    IEEE TRANSACTIONS ON COMPUTATIONAL SOCIAL SYSTEMS, 2023, 10 (02) : 492 - 506
  • [3] Federated learning for network attack detection using attention-based graph neural networks
    Wu, Jianping
    Qiu, Guangqiu
    Wu, Chunming
    Jiang, Weiwei
    Jin, Jiahe
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [4] Learning attention for object tracking with adversarial learning network
    Xu Cheng
    Chen Song
    Yongxiang Gu
    Beijing Chen
    EURASIP Journal on Image and Video Processing, 2020
  • [5] Specular highlight removal by federated generative adversarial network with attention mechanism
    Zheng, Yuanfeng
    Gao, Yanfei
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [6] Learning attention for object tracking with adversarial learning network
    Cheng, Xu
    Song, Chen
    Gu, Yongxiang
    Chen, Beijing
    EURASIP JOURNAL ON IMAGE AND VIDEO PROCESSING, 2020, 2020 (01)
  • [7] Exploring Adversarial Graph Autoencoders to Manipulate Federated Learning in The Internet of Things
    Li, Kai
    Yuan, Xin
    Zheng, Jingjing
    Ni, Wei
    Guizani, Mohsen
    2023 INTERNATIONAL WIRELESS COMMUNICATIONS AND MOBILE COMPUTING, IWCMC, 2023, : 898 - 903
  • [8] Graph Contrastive Learning with Generative Adversarial Network
    Wu, Cheng
    Wang, Chaokun
    Xu, Jingcao
    Liu, Ziyang
    Zheng, Kai
    Wang, Xiaowei
    Song, Yang
    Gai, Kun
    PROCEEDINGS OF THE 29TH ACM SIGKDD CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, KDD 2023, 2023, : 2721 - 2730
  • [9] Double negative sampled graph adversarial representation learning with motif-based structural attention network
    Zhang, Yinglong
    Yang, Shangying
    Kong, Mingyue
    Xia, Xuewen
    Xu, Xing
    NEUROCOMPUTING, 2025, 619
  • [10] Unsupervised video summarization with adversarial graph-based attention network
    Gunuganti, Jeshmitha
    Yeh, Zhi-Ting
    Wang, Jenq-Haur
    Norouzi, Mehdi
    JOURNAL OF VISUAL COMMUNICATION AND IMAGE REPRESENTATION, 2024, 102