Chain FL:通过区块链去中心化的联邦机器学习

Caner Korkmaz, Halil Eralp Kocas, Ahmet Uysal, Ahmed Masry, O. Ozkasap, Barış Akgün
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引用次数: 30

摘要

联邦学习是一种协作机器学习机制,它允许多方在不共享训练数据的情况下开发模型。这是一个很有前途的机制,因为它可以在不显著牺牲准确性的情况下,在医疗和银行等因法律、技术、伦理或安全问题而不利于数据共享的领域进行协作。在集中式联邦学习中,只有一个中央服务器,因此只有一个故障点。与集中式联邦学习不同,分散式联邦学习不依赖于单个中央服务器进行更新。在本文中,我们提出了一种名为Chain FL的分散联邦学习方法,该方法利用区块链将存储模型的责任委托给网络上的节点,而不是集中式服务器。链FL在MNIST数字识别任务上取得了令人满意的结果,与非链FL相比,准确率下降了0.20%,在CIFAR-10图像分类任务上,准确率下降了2.57%。
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Chain FL: Decentralized Federated Machine Learning via Blockchain
Federated learning is a collaborative machine learning mechanism that allows multiple parties to develop a model without sharing the training data. It is a promising mechanism since it empowers collaboration in fields such as medicine and banking where data sharing is not favorable due to legal, technical, ethical, or safety issues without significantly sacrificing accuracy. In centralized federated learning, there is a single central server, and hence it has a single point of failure. Unlike centralized federated learning, decentralized federated learning does not depend on a single central server for the updates. In this paper, we propose a decentralized federated learning approach named Chain FL that makes use of the blockchain to delegate the responsibility of storing the model to the nodes on the network instead of a centralized server. Chain FL produced promising results on the MNIST digit recognition task with a maximum 0.20% accuracy decrease, and on the CIFAR-10 image classification task with a maximum of 2.57% accuracy decrease as compared to non-FL counterparts.
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