4.6 Article

Blockchain-Enabled Asynchronous Federated Learning in Edge Computing

Journal

SENSORS
Volume 21, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/s21103335

Keywords

federated learning; blockchain; edge computing; asynchronous convergence

Funding

  1. Big Data Foundation Theory for Smart City [ZB10202001]
  2. Shanxi Province Science Foundation for Youths [201901D211306]
  3. Shanxi International Cooperation Project [201803D421-039]

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The rapid proliferation of edge computing devices has led to a growth in data, driving the development of machine learning technology, but privacy issues during data collection have raised concerns. To address these privacy concerns, synchronous federated learning method is proposed, but it suffers from inefficiencies and security vulnerabilities. Therefore, a novel method, Federated Learning with Asynchronous Convergence (FedAC) using a blockchain network, is proposed to address these issues.
The fast proliferation of edge computing devices brings an increasing growth of data, which directly promotes machine learning (ML) technology development. However, privacy issues during data collection for ML tasks raise extensive concerns. To solve this issue, synchronous federated learning (FL) is proposed, which enables the central servers and end devices to maintain the same ML models by only exchanging model parameters. However, the diversity of computing power and data sizes leads to a significant difference in local training data consumption, and thereby causes the inefficiency of FL. Besides, the centralized processing of FL is vulnerable to single-point failure and poisoning attacks. Motivated by this, we propose an innovative method, federated learning with asynchronous convergence (FedAC) considering a staleness coefficient, while using a blockchain network instead of the classic central server to aggregate the global model. It avoids real-world issues such as interruption by abnormal local device training failure, dedicated attacks, etc. By comparing with the baseline models, we implement the proposed method on a real-world dataset, MNIST, and achieve accuracy rates of 98.96% and 95.84% in both horizontal and vertical FL modes, respectively. Extensive evaluation results show that FedAC outperforms most existing models.

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