FAIR-BFL: Flexible and Incentive Redesign for Blockchain-based Federated Learning

Rongxin Xu, Shiva Raj Pokhrel, Qiujun Lan, Gang Li
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引用次数: 4

Abstract

Vanilla Federated learning (FL) relies on the centralized global aggregation mechanism and assumes that all clients are honest. This makes it a challenge for FL to alleviate the single point of failure and dishonest clients. These impending challenges in the design philosophy of FL call for blockchain-based federated learning (BFL) due to the benefits of coupling FL and blockchain (e.g., democracy, incentive, and immutability). However, one problem in vanilla BFL is that its capabilities do not follow adopters’ needs in a dynamic fashion. Besides, vanilla BFL relies on unverifiable clients’ self-reported contributions like data size because checking clients’ raw data is not allowed in FL for privacy concerns. We design and evaluate a novel BFL framework, and resolve the identified challenges in vanilla BFL with greater flexibility and incentive mechanism called FAIR-BFL. In contrast to existing works, FAIR-BFL offers unprecedented flexibility via the modular design, allowing adopters to adjust its capabilities following business demands in a dynamic fashion. Our design accounts for BFL’s ability to quantify each client’s contribution to the global learning process. Such quantification provides a rational metric for distributing the rewards among federated clients and helps discover malicious participants that may poison the global model.
FAIR-BFL:基于区块链的联邦学习的灵活和激励的重新设计
香草联邦学习(FL)依赖于集中式全局聚合机制,并假设所有客户端都是诚实的。这使得FL在减轻单点故障和不诚实客户端方面面临挑战。FL设计理念中这些即将面临的挑战需要基于区块链的联邦学习(BFL),因为FL和区块链耦合的好处(例如,民主、激励和不变性)。然而,普通BFL的一个问题是,它的功能不能以动态的方式满足采用者的需求。此外,香草BFL依赖于无法验证的客户端自我报告的贡献,比如数据大小,因为出于隐私考虑,FL不允许检查客户端的原始数据。我们设计并评估了一种新的BFL框架,并以更大的灵活性和激励机制FAIR-BFL解决了传统BFL中存在的挑战。与现有的工程相比,FAIR-BFL通过模块化设计提供了前所未有的灵活性,允许采用者以动态的方式根据业务需求调整其功能。我们的设计考虑了BFL量化每个客户对全球学习过程的贡献的能力。这种量化为在联邦客户端之间分配奖励提供了合理的度量,并有助于发现可能破坏全局模型的恶意参与者。
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