JOURNAL ARTICLE

FIFL: A Fair Incentive Mechanism for Federated Learning

Abstract

Federated learning is a novel machine learning framework that enables multiple devices to collaboratively train high-performance models while preserving data privacy. Federated learning is a kind of crowdsourcing computing, where a task publisher shares profit with workers to utilize their data and computing resources. Intuitively, devices have no interest to participate in training without rewards that match their expended resources. In addition, guarding against malicious workers is also essential because they may upload meaningless updates to get undeserving rewards or damage the global model. In order to effectively solve these problems, we propose FIFL, a fair incentive mechanism for federated learning. FIFL rewards workers fairly to attract reliable and efficient ones while punishing and eliminating the malicious ones based on a dynamic real-time worker assessment mechanism. We evaluate the effectiveness of FIFL through theoretical analysis and comprehensive experiments. The evaluation results show that FIFL fairly distributes rewards according to workers' behaviour and quality. FIFL increases the system revenue by 0.2% to 3.4% in reliable federations compared with baselines. In the unreliable scenario containing attackers which destroy the model's performance, the system revenue of FIFL outperforms the baselines by more than 46.7%.

Keywords:
Incentive Computer science Mechanism (biology) Internet privacy Computer security Microeconomics Economics

Metrics

40
Cited By
4.37
FWCI (Field Weighted Citation Impact)
26
Refs
0.95
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Privacy-Preserving Technologies in Data
Physical Sciences →  Computer Science →  Artificial Intelligence
Cryptography and Data Security
Physical Sciences →  Computer Science →  Artificial Intelligence
Blockchain Technology Applications and Security
Physical Sciences →  Computer Science →  Information Systems

Related Documents

JOURNAL ARTICLE

A Fair Incentive Mechanism in Federated Learning

Liang BaiFei HuJiao ChuanmingXiaoqiang LiuNan WangYubo Liu

Journal:   2021 2nd International Conference on Big Data Economy and Information Management (BDEIM) Year: 2021 Pages: 396-399
BOOK-CHAPTER

RIFL: A Fair Incentive Mechanism for Federated Learning

Huanrong TangXilong LiaoJianquan Ouyang

Lecture notes in computer science Year: 2024 Pages: 365-377
JOURNAL ARTICLE

FDFL: Fair and Discrepancy-Aware Incentive Mechanism for Federated Learning

Zhe ChenHaiyan ZhangXinghua LiYinbin MiaoXiaohan ZhangMan ZhangSiqi MaRobert H. Deng

Journal:   IEEE Transactions on Information Forensics and Security Year: 2024 Vol: 19 Pages: 8140-8154
JOURNAL ARTICLE

FRIMFL: A Fair and Reliable Incentive Mechanism in Federated Learning

Abrar AhmedBong Jun Choi

Journal:   Electronics Year: 2023 Vol: 12 (15)Pages: 3259-3259
© 2026 ScienceGate Book Chapters — All rights reserved.