Privacy-preserving Blockchain-based Global Data Sharing for Federated Learning with Non-IID Data

Zhuotao Lian, Qingkui Zeng, Chunhua Su
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Abstract

Federated learning is a popular privacy-enhanced distributed machine learning method that solves the problem of local data privacy by gathering the training results (such as model weights, gradients, etc.) instead of the raw data to generate a global model. But a practical problem it faces is the non-independent and identical distribution of data, which means the local data of each participant is highly inconsistent, both in terms of quantity and distribution. Moreover, there is a lack of research related to the efficiency and privacy issues in the pre-training process. Therefore, in this paper, we propose a novel solution that utilizes blockchain technology to realize small-scale global data sharing to assist the training progress. Simulation experiments verify that our method not only guarantees data security but also greatly improves performance in terms of training speed and accuracy.
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基于区块链的非iid数据联邦学习全局数据共享保护隐私
联邦学习是一种流行的隐私增强分布式机器学习方法,它通过收集训练结果(如模型权重、梯度等)而不是原始数据来生成全局模型来解决本地数据隐私问题。但它面临的一个实际问题是数据的非独立和相同分布,即每个参与者的本地数据在数量和分布上都高度不一致。此外,关于预训练过程中的效率和隐私问题的研究还很缺乏。因此,在本文中,我们提出了一种新颖的解决方案,利用区块链技术实现小规模的全球数据共享,以辅助培训进度。仿真实验证明,该方法不仅保证了数据的安全性,而且在训练速度和准确性方面大大提高了性能。
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