ΔSFL: (Decoupled Server Federated Learning) to Utilize DLG Attacks in Federated Learning by Decoupling the Server

被引:0
|
作者
Paul, Sudipta [1 ]
Torra, Vicenc [1 ]
机构
[1] Umea Univ, Dept Comp Sci, Umea, Sweden
来源
PROCEEDINGS OF THE 20TH INTERNATIONAL CONFERENCE ON SECURITY AND CRYPTOGRAPHY, SECRYPT 2023 | 2023年
关键词
Federated Learning; Privacy; Attack; Data Poisoning;
D O I
10.5220/0012150700003555
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Federated Learning or FL is the orchestration of centrally connected devices where a pre-trained machine learning model is sent to the devices and the devices train the machine learning model with their own data, individually. Though the data is not being stored in a central database the framework is still prone to data leakage or privacy breach. There are several different privacy attacks on FL such as, membership inference attack, gradient inversion attack, data poisoning attack, backdoor attack, deep learning from gradients attack (DLG). So far different technologies such as differential privacy, secure multi party computation, homomorphic encryption, k-anonymity etc. have been used to tackle the privacy breach. Nevertheless, there is very little exploration on the privacy by design approach and the analysis of the underlying network structure of the seemingly unrelated FL network. Here we are proposing the Delta SFL framework, where the server is being decoupled into server and an analyst. Also, in the learning process, Delta SFL will learn the spatio information from the community detection, and then from DLG attack. Using the knowledge from both the algorithms, Delta SFL will improve itself. We experimented on three different datasets (geolife trajectory, cora, citeseer) with satisfactory results.
引用
收藏
页码:577 / 584
页数:8
相关论文
共 50 条
  • [1] A review on client-server attacks and defenses in federated learning
    Sharma, Anee
    Marchang, Ningrinla
    COMPUTERS & SECURITY, 2024, 140
  • [2] Federated learning with joint server-client momentum
    Boyuan Li
    Shaohui Zhang
    Qiuying Han
    Scientific Reports, 15 (1)
  • [3] Personalized Federated Learning With Server-Side Information
    Song, Jaehun
    Oh, Min-Hwan
    Kim, Hyung-Sin
    IEEE ACCESS, 2022, 10 : 120245 - 120255
  • [4] Perfectly Accurate Membership Inference by a Dishonest Central Server in Federated Learning
    Pichler, Georg
    Romanelli, Marco
    Vega, Leonardo Rey
    Piantanida, Pablo
    IEEE TRANSACTIONS ON DEPENDABLE AND SECURE COMPUTING, 2024, 21 (04) : 4290 - 4296
  • [5] FedFit: Server Aggregation Through Linear Regression in Federated Learning
    Kashima, Taiga
    Kishida, Ikki
    Amma, Ayako
    Nakayama, Hideki
    IEEE ACCESS, 2024, 12 : 22803 - 22812
  • [6] Fast Server Learning Rate Tuning for Coded Federated Dropout
    Verardo, Giacomo
    Barreira, Daniel
    Chiesa, Marco
    Kostic, Dejan
    Maguire, Gerald Q., Jr.
    TRUSTWORTHY FEDERATED LEARNING, FL 2022, 2023, 13448 : 84 - 99
  • [7] Server-Client Collaborative Distillation for Federated Reinforcement Learning
    Mai, Weiming
    Yao, Jiangchao
    Chen, Gong
    Zhang, Ya
    Cheung, Yiu-Ming
    Han, Bo
    ACM TRANSACTIONS ON KNOWLEDGE DISCOVERY FROM DATA, 2024, 18 (01)
  • [8] A Joint Client-Server Watermarking Framework for Federated Learning
    Fang, Shufen
    Gai, Keke
    Yu, Jing
    KNOWLEDGE SCIENCE, ENGINEERING AND MANAGEMENT, PT IV, KSEM 2024, 2024, 14887 : 424 - 436
  • [9] A Study of Enhancing Federated Learning on Non-IID Data with Server Learning
    Mai V.S.
    La R.J.
    Zhang T.
    IEEE Transactions on Artificial Intelligence, 2024, 5 (11): : 1 - 15
  • [10] Dual-Server-Based Lightweight Privacy-Preserving Federated Learning
    Zhong, Liangyu
    Wang, Lulu
    Zhang, Lei
    Domingo-Ferrer, Josep
    Xu, Lin
    Wu, Changti
    Zhang, Rui
    IEEE TRANSACTIONS ON NETWORK AND SERVICE MANAGEMENT, 2024, 21 (04): : 4787 - 4800