Fair Federated Learning with Opposite GAN

被引:3
|
作者
Han, Mengde [1 ]
Zhu, Tianqing [2 ]
Zhou, Wanlei [2 ]
机构
[1] Univ Technol Sydney, Sch Comp Sci, 15 Broadway, Sydney, NSW 2007, Australia
[2] City Univ Macau, Fac Data Sci, Macau, Peoples R China
基金
澳大利亚研究理事会;
关键词
Algorithmic fairness; Performance consistency; Federated learning; Generative adversarial networks;
D O I
10.1016/j.knosys.2024.111420
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Federated learning has surfaced as a proficient strategy for developing distributed machine learning models, leveraging decentralized data sources. This approach negates the requirement for centralizing raw data, thereby maintaining privacy and harnessing the strength of local data. Nevertheless, non -uniform performance and biases in the algorithm across different clients can adversely affect the results. To tackle these challenges, we introduce a method named Fair Federated Learning with Opposite Generative Adversarial Networks (FFL-OppoGAN), a method that leverages Opposite Generative Adversarial Networks (OppoGAN) to generate synthetic tabular datasets and incorporate them into federated learning to improve fairness and consistency. By adding synthetic data that minimizes algorithmic discrimination and adjusting the learning process to promote uniform performance among clients, our method ensures a more equitable learning process. We evaluated the effectiveness of FFL-OppoGAN on the Adult and Dutch datasets, chosen for their relevance to our study. The results demonstrate that our method successfully enhances algorithmic fairness and performance consistency. It achieves superior results compared to baseline methods. In conclusion, FFL-OppoGAN offers a robust solution for fair and consistent federated learning, setting a promising precedent for future federated learning systems.
引用
收藏
页数:11
相关论文
共 50 条
  • [11] A Fair Contribution Measurement Method for Federated Learning
    Guo, Peng
    Yang, Yanqing
    Guo, Wei
    Shen, Yanping
    SENSORS, 2024, 24 (15)
  • [12] Fair Federated Learning via Bounded Group Loss
    Hu, Shengyuan
    Wu, Zhiwei Steven
    Smith, Virginia
    IEEE CONFERENCE ON SAFE AND TRUSTWORTHY MACHINE LEARNING, SATML 2024, 2024, : 140 - 160
  • [13] A Fair and Efficient Federated Learning Algorithm for Autonomous Driving
    Tang, Xinlong
    Zhang, Jiayi
    Fu, Yuchuan
    Li, Changle
    Cheng, Nan
    Yuan, Xiaoming
    2023 IEEE 98TH VEHICULAR TECHNOLOGY CONFERENCE, VTC2023-FALL, 2023,
  • [14] Eiffel: Efficient and Fair Scheduling in Adaptive Federated Learning
    Sultana, Abeda
    Haque, Md Mainul
    Chen, Li
    Xu, Fei
    Yuan, Xu
    IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS, 2022, 33 (12) : 4282 - 4294
  • [15] FRIMFL: A Fair and Reliable Incentive Mechanism in Federated Learning
    Ahmed, Abrar
    Choi, Bong Jun
    ELECTRONICS, 2023, 12 (15)
  • [16] FairFed: Cross-Device Fair Federated Learning
    Rehman, Muhammad Habib Ur
    Dirir, Ahmed Mukhtar
    Salah, Khaled
    Svetinovic, Davor
    2020 IEEE APPLIED IMAGERY PATTERN RECOGNITION WORKSHOP (AIPR): TRUSTED COMPUTING, PRIVACY, AND SECURING MULTIMEDIA, 2020,
  • [17] Defense Scheme of Federated Learning Based on GAN
    Zhang, Qing
    Zhang, Ping
    Lu, Wenlong
    Zhou, Xiaoyu
    Bao, An
    ELECTRONICS, 2025, 14 (03):
  • [18] Inference attacks based on GAN in federated learning
    Trung Ha
    Tran Khanh Dang
    INTERNATIONAL JOURNAL OF WEB INFORMATION SYSTEMS, 2022, 18 (2/3) : 117 - 136
  • [19] A Secure and Fair Client Selection Based on DDPG for Federated Learning
    Wan, Tao
    Feng, Shun
    Liao, Weichuan
    Jiang, Nan
    Zhou, Jie
    INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS, 2024, 2024
  • [20] Proportionally Fair Hospital Collaborations in Federated Learning of Histopathology Images
    Hosseini, S. Maryam
    Sikaroudi, Milad
    Babaie, Morteza
    Tizhoosh, H. R.
    IEEE TRANSACTIONS ON MEDICAL IMAGING, 2023, 42 (07) : 1982 - 1995