A More Secure Split: Enhancing the Security of Privacy-Preserving Split Learning

被引:0
|
作者
Khan, Tanveer [1 ]
Nguyen, Khoa [1 ]
Michalas, Antonis [1 ,2 ]
机构
[1] Tampere Univ, Tampere, Finland
[2] RISE Res Inst Sweden, Gothenburg, Sweden
来源
关键词
Activation Maps; Homomorphic Encryption; Machine Learning; Privacy; Split Learning;
D O I
10.1007/978-3-031-47748-5_17
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Split learning (SL) is a new collaborative learning technique that allows participants, e.g. a client and a server, to train machine learning models without the client sharing raw data. In this setting, the client initially applies its part of the machine learning model on the raw data to generate Activation Maps (AMs) and then sends them to the server to continue the training process. Previous works in the field demonstrated that reconstructing AMs could result in privacy leakage of client data. In addition to that, existing mitigation techniques that overcome the privacy leakage of SL prove to be significantly worse in terms of accuracy. In this paper, we improve upon previous works by constructing a protocol based on U-shaped SL that can operate on homomorphically encrypted data. More precisely, in our approach, the client applies homomorphic encryption on the AMs before sending them to the server, thus protecting user privacy. This is an important improvement that reduces privacy leakage in comparison to other SL-based works. Finally, our results show that, with the optimum set of parameters, training with HE data in the U-shaped SL setting only reduces accuracy by 2.65% compared to training on plaintext. In addition, raw training data privacy is preserved.
引用
收藏
页码:307 / 329
页数:23
相关论文
共 50 条
  • [21] Edge-assisted U-shaped split federated learning with privacy-preserving for Internet of Things
    Zhang, Shiqiang
    Zhao, Zihang
    Liu, Detian
    Cao, Yang
    Tang, Hengliang
    You, Siqing
    EXPERT SYSTEMS WITH APPLICATIONS, 2025, 262
  • [22] PPSFL: Privacy-Preserving Split Federated Learning for heterogeneous data in edge-based Internet of Things
    Zheng, Jiali
    Chen, Yixin
    Lai, Qijia
    FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE, 2024, 156 : 231 - 241
  • [23] Privacy-Preserving Machine Learning Using Federated Learning and Secure Aggregation
    Lia, Dragos
    Togan, Mihai
    PROCEEDINGS OF THE 2020 12TH INTERNATIONAL CONFERENCE ON ELECTRONICS, COMPUTERS AND ARTIFICIAL INTELLIGENCE (ECAI-2020), 2020,
  • [24] More Practical Privacy-Preserving Machine Learning as A Service via Efficient Secure Matrix Multiplication
    Lu, Wen-jie
    Sakuma, Jun
    WAHC'18: PROCEEDINGS OF THE 6TH WORKSHOP ON ENCRYPTED COMPUTING & APPLIED HOMOMORPHIC CRYPTOGRAPHY, 2018, : 25 - 36
  • [25] DEVA: Decentralized, Verifiable Secure Aggregation for Privacy-Preserving Learning
    Tsaloli, Georgia
    Liang, Bei
    Brunetta, Carlo
    Banegas, Gustavo
    Mitrokotsa, Aikaterini
    INFORMATION SECURITY (ISC 2021), 2021, 13118 : 296 - 319
  • [26] GuardNN: Secure Accelerator Architecture for Privacy-Preserving Deep Learning
    Hua, Weizhe
    Umar, Muhammad
    Zhang, Zhiru
    Suh, G. Edward
    PROCEEDINGS OF THE 59TH ACM/IEEE DESIGN AUTOMATION CONFERENCE, DAC 2022, 2022, : 349 - 354
  • [27] Toward Secure Weighted Aggregation for Privacy-Preserving Federated Learning
    He, Yunlong
    Yu, Jia
    IEEE TRANSACTIONS ON INFORMATION FORENSICS AND SECURITY, 2025, 20 : 3475 - 3488
  • [28] Secure, privacy-preserving and federated machine learning in medical imaging
    Georgios A. Kaissis
    Marcus R. Makowski
    Daniel Rückert
    Rickmer F. Braren
    Nature Machine Intelligence, 2020, 2 : 305 - 311
  • [29] Secure, privacy-preserving and federated machine learning in medical imaging
    Kaissis, Georgios A.
    Makowski, Marcus R.
    Ruckert, Daniel
    Braren, Rickmer F.
    NATURE MACHINE INTELLIGENCE, 2020, 2 (06) : 305 - 311
  • [30] ESVFL: Efficient and secure verifiable federated learning with privacy-preserving
    Cai, Jiewang
    Shen, Wenting
    Qin, Jing
    INFORMATION FUSION, 2024, 109