A Novel Approach for Differential Privacy-Preserving Federated Learning

被引:0
|
作者
Elgabli, Anis [1 ,2 ]
Mesbah, Wessam [2 ,3 ]
机构
[1] King Fahd University of Petroleum and Minerals, Industrial and Systems Engineering Department, Dhahran,31261, Saudi Arabia
[2] King Fahd University of Petroleum and Minerals, Center for Communication Systems and Sensing, Dhahran,31261, Saudi Arabia
[3] King Fahd University of Petroleum and Minerals, Electrical Engineering Department, Dhahran,31261, Saudi Arabia
关键词
Adversarial machine learning - Contrastive Learning - Differential privacy - Privacy-preserving techniques - Stochastic models - Stochastic systems;
D O I
10.1109/OJCOMS.2024.3521651
中图分类号
学科分类号
摘要
In this paper, we start with a comprehensive evaluation of the effect of adding differential privacy (DP) to federated learning (FL) approaches, focusing on methodologies employing global (stochastic) gradient descent (SGD/GD), and local SGD/GD techniques. These global and local techniques are commonly referred to as FedSGD/FedGD and FedAvg, respectively. Our analysis reveals that, as far as only one local iteration is performed by each client before transmitting to the parameter server (PS) for FedGD, both FedGD and FedAvg achieve the same accuracy/loss for the same privacy guarantees, despite requiring different perturbation noise power. Furthermore, we propose a novel DP mechanism, which is shown to ensure privacy without compromising performance. In particular, we propose the sharing of a random seed (or a specified sequence of random seeds) among collaborative clients, where each client uses this seed to introduces perturbations to its updates prior to transmission to the PS. Importantly, due to the random seed sharing, clients possess the capability to negate the noise effects and recover their original global model. This mechanism preserves privacy both at a curiousPS or at external eavesdroppers without compromising the performance of the final model at each client, thus mitigating the risk of inversion attacks aimed at retrieving (partially or fully) the clients' data. Furthermore, the importance and effect of clipping in the practical implementation of DP mechanisms, in order to upper bound the perturbation noise, is discussed. Moreover, owing to the ability to cancel noise at individual clients, our proposed approach enables the introduction of arbitrarily high perturbation levels, and hence, clipping can be totally avoided, resulting in the same performance of noise-free standard FL approaches. © 2020 IEEE.
引用
收藏
页码:466 / 476
相关论文
共 50 条
  • [21] Privacy-preserving Heterogeneous Federated Transfer Learning
    Gao, Dashan
    Liu, Yang
    Huang, Anbu
    Ju, Ce
    Yu, Han
    Yang, Qiang
    2019 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2019, : 2552 - 2559
  • [22] A Personalized Privacy-Preserving Scheme for Federated Learning
    Li, Zhenyu
    2022 IEEE INTERNATIONAL CONFERENCE ON ELECTRICAL ENGINEERING, BIG DATA AND ALGORITHMS (EEBDA), 2022, : 1352 - 1356
  • [23] Privacy-preserving federated discovery of DNA motifs with differential privacy
    Chen, Yao
    Gan, Wensheng
    Huang, Gengsen
    Wu, Yongdong
    Yu, Philip S.
    EXPERT SYSTEMS WITH APPLICATIONS, 2024, 249
  • [24] Privacy-preserving federated learning for radiotherapy applications
    Hayati, H.
    Heijmans, S.
    Persoon, L.
    Murguia, C.
    van de Wouw, N.
    RADIOTHERAPY AND ONCOLOGY, 2023, 182 : S238 - S240
  • [25] POSTER: Privacy-preserving Federated Active Learning
    Kurniawan, Hendra
    Mambo, Masahiro
    SCIENCE OF CYBER SECURITY, SCISEC 2022 WORKSHOPS, 2022, 1680 : 223 - 226
  • [26] PPFLV: privacy-preserving federated learning with verifiability
    Zhou, Qun
    Shen, Wenting
    CLUSTER COMPUTING-THE JOURNAL OF NETWORKS SOFTWARE TOOLS AND APPLICATIONS, 2024, 27 (09): : 12727 - 12743
  • [27] Contribution Measurement in Privacy-Preserving Federated Learning
    Hsu, Ruei-Hau
    Yu, Yi-An
    Su, Hsuan-Cheng
    Journal of Information Science and Engineering, 2024, 40 (06) : 1173 - 1196
  • [28] Privacy-Preserving Federated Learning in Fog Computing
    Zhou, Chunyi
    Fu, Anmin
    Yu, Shui
    Yang, Wei
    Wang, Huaqun
    Zhang, Yuqing
    IEEE INTERNET OF THINGS JOURNAL, 2020, 7 (11): : 10782 - 10793
  • [29] Federated Learning for Privacy-Preserving Speaker Recognition
    Woubie, Abraham
    Backstrom, Tom
    IEEE ACCESS, 2021, 9 : 149477 - 149485
  • [30] Privacy-Preserving Decentralized Aggregation for Federated Learning
    Jeon, Beomyeol
    Ferdous, S. M.
    Rahmant, Muntasir Raihan
    Walid, Anwar
    IEEE CONFERENCE ON COMPUTER COMMUNICATIONS WORKSHOPS (IEEE INFOCOM WKSHPS 2021), 2021,