Ruyi: A Configurable and Efficient Secure Multi-Party Learning Framework with Privileged Parties

被引:0
|
作者
Song, Lushan [1 ]
Wang, Zhexuan [1 ]
Lin, Guopeng [1 ]
Han, Weili [1 ]
机构
[1] Fudan University, School of Computer Science, Shanghai,10246, China
基金
中国国家自然科学基金;
关键词
Contrastive Learning - Differential privacy - Federated learning - Privacy-preserving techniques - Self-supervised learning - Vector spaces;
D O I
10.1109/TIFS.2024.3488507
中图分类号
学科分类号
摘要
Secure multi-party learning (MPL) enables multiple parties to train machine learning models with privacy preservation. MPL frameworks typically follow the peer-to-peer architecture, where each party has the same chance to handle the results. However, the cooperative parties in business scenarios usually have unequal statuses. Thus, Song et al. (CCS'22) presented pMPL, a hierarchical MPL framework with a privileged party. Nonetheless, pMPL has two limitations: (i) it has limited configurability requiring manually finding a public matrix that satisfies four constraints, which is difficult when the number of parties increases, and (ii) it is inefficient due to the huge online communication overhead. In this paper, we are motivated to propose Ruyi, a configurable and efficient MPL framework with privileged parties. Firstly, we reduce the public matrix constraints from four to two while ensuring the same privileged guarantees by extending the standard resharing paradigm to vector space secret sharing in order to implement the share conversion protocol and performing all the computations over a prime field rather than a ring. This enhances the configurability so that the Vandermonde matrix can always satisfy the public matrix constraints when given the number of parties, including privileged parties, assistant parties, and assistant parties allowed to drop out. Secondly, we reduce the online communication overhead by adapting the masked evaluation paradigm to vector space secret sharing. Experimental results demonstrate that Ruyi is configurable with multiple parties and outperforms pMPL by up to 53.87 ×, 13.91 ×, and 2.76 × for linear regression, logistic regression, and neural networks, respectively. © 2005-2012 IEEE.
引用
下载
收藏
页码:10355 / 10370
相关论文
共 50 条
  • [31] SCALR: Communication-Efficient Secure Multi-Party Logistic Regression
    Lu, Xingyu
    Sami, Hasin Us
    Guler, Basak
    IEEE TRANSACTIONS ON COMMUNICATIONS, 2024, 72 (01) : 162 - 178
  • [32] Efficient secure multi-party computation for proof of custody in Ethereum sharding
    Tong, Yuxin
    Xie, Xiang
    Yang, Kang
    Zhang, Rui
    Xue, Rui
    DESIGNS CODES AND CRYPTOGRAPHY, 2024, 92 (07) : 2055 - 2083
  • [33] Quantum secure multi-party computational geometry based on multi-party summation and multiplication
    Dou, Zhao
    Wang, Yifei
    Liu, Zhaoqian
    Bi, Jingguo
    Chen, Xiubo
    Li, Lixiang
    QUANTUM SCIENCE AND TECHNOLOGY, 2024, 9 (02)
  • [34] Learning Without Peeking: Secure Multi-party Computation Genetic Programming
    Kim, Jinhan
    Epitropakis, Michael G.
    Yoo, Shin
    SEARCH-BASED SOFTWARE ENGINEERING, SSBSE 2018, 2018, 11036 : 246 - 261
  • [35] Secure Byzantine resilient federated learning based on multi-party computation
    Gao, Hongfeng
    Huang, Hao
    Tian, Youliang
    Tongxin Xuebao/Journal on Communications, 2025, 46 (02): : 108 - 122
  • [36] An efficient approach for privacy preserving decentralized deep learning models based on secure multi-party computation
    Anh-Tu Tran
    The-Dung Luong
    Karnjana, Jessada
    Van-Nam Huynh
    NEUROCOMPUTING, 2021, 422 : 245 - 262
  • [37] A Verifiable Federated Learning Scheme Based on Secure Multi-party Computation
    Mou, Wenhao
    Fu, Chunlei
    Lei, Yan
    Hu, Chunqiang
    WIRELESS ALGORITHMS, SYSTEMS, AND APPLICATIONS, WASA 2021, PT II, 2021, 12938 : 198 - 209
  • [38] MPCFL: Towards Multi-party Computation for Secure Federated Learning Aggregation
    Kaminaga, Hiroki
    Awaysheh, Feras M.
    Alawadi, Sadi
    Kamm, Liina
    16TH IEEE/ACM INTERNATIONAL CONFERENCE ON UTILITY AND CLOUD COMPUTING, UCC 2023, 2023,
  • [39] An Efficient Multi-Party Secure Aggregation Method Based on Multi-Homomorphic Attributes
    Gao, Qi
    Sun, Yi
    Chen, Xingyuan
    Yang, Fan
    Wang, Youhe
    ELECTRONICS, 2024, 13 (04)
  • [40] Demand Response Transaction Framework Based on Blockchain and Secure Multi-party Computation
    Li, Lei
    Lv, Ting
    Zhang, Zhi
    Zhou, Ziqiang
    Yao, Ying
    Yan, Yong
    Wang, Yunchu
    Lin, Zhenzhi
    2023 5TH ASIA ENERGY AND ELECTRICAL ENGINEERING SYMPOSIUM, AEEES, 2023, : 1401 - 1406