Improving Fairness for Data Valuation in Horizontal Federated Learning

被引:34
|
作者
Fan, Zhenan [1 ]
Fang, Huang [1 ]
Zhou, Zirui [2 ]
Pei, Jian [3 ]
Friedlander, Michael P. [1 ]
Liu, Changxin [4 ]
Zhang, Yong [2 ]
机构
[1] Univ British Columbia, Vancouver, BC, Canada
[2] Huawei Technol Canada Co, Markham, ON, Canada
[3] Simon Fraser Univ, Burnaby, BC, Canada
[4] KTH Royal Inst Technol, Stockholm, Sweden
关键词
contribution evaluation; fairness; federated learning; MATRIX FACTORIZATION;
D O I
10.1109/ICDE53745.2022.00228
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 is an emerging decentralized machine learning scheme that allows multiple data owners to work collaboratively while ensuring data privacy. The success of federated learning depends largely on the participation of data owners. To sustain and encourage data owners' participation, it is crucial to fairly evaluate the quality of the data provided by the data owners as well as their contribution to the final model and reward them correspondingly. Federated Shapley value, recently proposed by Wang et al. [Federated Learning, 2020], is a measure for data value under the framework of federated learning that satisfies many desired properties for data valuation. However, there are still factors of potential unfairness in the design of federated Shapley value because two data owners with the same local data may not receive the same evaluation. We propose a new measure called completed federated Shapley value to improve the fairness of federated Shapley value. The design depends on completing a matrix consisting of all the possible contributions by different subsets of the data owners. It is shown under mild conditions that this matrix is approximately low-rank by leveraging concepts and tools from optimization. Both theoretical analysis and empirical evaluation verify that the proposed measure does improve fairness in many circumstances.
引用
收藏
页码:2440 / 2453
页数:14
相关论文
共 50 条
  • [31] Inflorescence: A Framework for Evaluating Fairness with Clustered Federated Learning
    Kyllo, Alex
    Mashhadi, Afra
    ADJUNCT PROCEEDINGS OF THE 2023 ACM INTERNATIONAL JOINT CONFERENCE ON PERVASIVE AND UBIQUITOUS COMPUTING & THE 2023 ACM INTERNATIONAL SYMPOSIUM ON WEARABLE COMPUTING, UBICOMP/ISWC 2023 ADJUNCT, 2023, : 374 - 380
  • [32] Federated Learning for Generalization, Robustness, Fairness: A Survey and Benchmark
    Huang, Wenke
    Ye, Mang
    Shi, Zekun
    Wan, Guancheng
    Li, He
    Du, Bo
    Yang, Qiang
    IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2024, 46 (12) : 9387 - 9406
  • [33] Client Selection for Asynchronous Federated Learning with Fairness Consideration
    Zhu, Hongbin
    Yang, Miao
    Kuang, Junqian
    Qian, Hua
    Zhou, Yong
    2022 IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS WORKSHOPS (ICC WORKSHOPS), 2022, : 800 - 805
  • [34] Hardware-Sensitive Fairness in Heterogeneous Federated Learning
    Talukder, Zahidur
    Lu, Bingqian
    Ren, Shaolei
    Islam, Mohammad atiqul
    ACM TRANSACTIONS ON MODELING AND PERFORMANCE EVALUATION OF COMPUTING SYSTEMS, 2025, 10 (01)
  • [35] Fairness in Federated Learning via Core-Stability
    Chaudhury, Bhaskar Ray
    Li, Linyi
    Kang, Mintong
    Li, Bo
    Mehta, Ruta
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35, NEURIPS 2022, 2022,
  • [36] FAIRNESS-AWARE CLIENT SELECTION FOR FEDERATED LEARNING
    Shi, Yuxin
    Liu, Zelei
    Shi, Zhuan
    Yu, Han
    2023 IEEE INTERNATIONAL CONFERENCE ON MULTIMEDIA AND EXPO, ICME, 2023, : 324 - 329
  • [37] The Impact of Differential Privacy on Model Fairness in Federated Learning
    Gu, Xiuting
    Zhu, Tianqing
    Li, Jie
    Zhang, Tao
    Ren, Wei
    NETWORK AND SYSTEM SECURITY, NSS 2020, 2020, 12570 : 419 - 430
  • [38] Analyzing the Impact of Personalization on Fairness in Federated Learning for Healthcare
    Wang, Tongnian
    Zhang, Kai
    Cai, Jiannan
    Gong, Yanmin
    Choo, Kim-Kwang Raymond
    Guo, Yuanxiong
    JOURNAL OF HEALTHCARE INFORMATICS RESEARCH, 2024, 8 (02) : 181 - 205
  • [39] A Fairness-aware Incentive Scheme for Federated Learning
    Yu, Han
    Liu, Zelei
    Liu, Yang
    Chen, Tianjian
    Cong, Mingshu
    Weng, Xi
    Niyato, Dusit
    Yang, Qiang
    PROCEEDINGS OF THE 3RD AAAI/ACM CONFERENCE ON AI, ETHICS, AND SOCIETY AIES 2020, 2020, : 393 - 399
  • [40] Improving Synthetic Data Generation Through Federated Learning in Scarce and Heterogeneous Data Scenarios
    Apellaniz, Patricia A.
    Parras, Juan
    Zazo, Santiago
    BIG DATA AND COGNITIVE COMPUTING, 2025, 9 (02)