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Quality, Reliability, Security and Robustness in Heterogeneous Systems. 19th EAI International Conference, QShine 2023, Shenzhen, China, October 8 – 9, 2023, Proceedings, Part II

Research Article

M2F: Multi-centered Fairness-Aware Federated Learning Framework

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  • @INPROCEEDINGS{10.1007/978-3-031-65123-6_7,
        author={Jing Deng and Handi Chen and Yunhin Chan and Edith Ngai},
        title={M2F: Multi-centered Fairness-Aware Federated Learning Framework},
        proceedings={Quality, Reliability, Security and Robustness in Heterogeneous Systems. 19th EAI International Conference, QShine 2023, Shenzhen, China, October 8 -- 9, 2023, Proceedings, Part II},
        proceedings_a={QSHINE PART 2},
        year={2024},
        month={8},
        keywords={Federated learning fairness incentive mechanism},
        doi={10.1007/978-3-031-65123-6_7}
    }
    
  • Jing Deng
    Handi Chen
    Yunhin Chan
    Edith Ngai
    Year: 2024
    M2F: Multi-centered Fairness-Aware Federated Learning Framework
    QSHINE PART 2
    Springer
    DOI: 10.1007/978-3-031-65123-6_7
Jing Deng, Handi Chen, Yunhin Chan, Edith Ngai,*
    *Contact email: chngai@eee.hku.hk

    Abstract

    Federated learning (FL) is a promising technique to train machine learning models across distributed and privacy-conscious devices. The clients co-train a global model, while their contributions to global model training differ due to inherent heterogeneity in data and capabilities. This induces inequitable incentives for their contributions. Existing incentive mechanisms relying on a single model for incentive allocation often underestimate client contributions when there are significant data discrepancies among them. Therefore, this paper proposes a Multi-centered Fairness-aware FL framework (M2F). It implements a clustering method based on model similarity to construct personalized contribution evaluation adaptively. We also design a multi-dimensional metric to evaluate client quality by considering participation rate, computation ability, and training dataset size. In this design, clients receive a customized variant of the aggregated gradient as an incentive at the end of each training iteration. Experimental results validate that the M2F framework can accurately differentiate clients with heterogeneous datasets and diverse quality by increasing the convergence speed and accuracy gaps among them, hence promoting fairness.

    Keywords
    Federated learning fairness incentive mechanism
    Published
    2024-08-20
    Appears in
    SpringerLink
    http://dx.doi.org/10.1007/978-3-031-65123-6_7
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