基于聚类的分层联邦学习框架,具有差分隐私和安全聚合

Chih-Hung Han, Wei-Chih Yin, Chia-Yu Lin, Ted T. Kuo
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引用次数: 0

摘要

联邦学习是为了解决传统机器学习的数据隐私和安全问题而提出的,传统机器学习需要将训练数据集本地存储在机器或数据中心进行训练。然而,联邦学习可能存在非独立和同分布(Non-IID)数据和私有安全等问题。非iid会导致训练准确率低于预期,并且客户上传的数据可能存在隐私泄露的风险。为此,本文提出了具有差分隐私和安全聚合的基于聚类的分层联邦学习框架CHFDS。在训练开始之前,我们对所有客户进行聚类,使每组客户之间的数据分布相似。这意味着在每一轮训练中只从每个集群中选择一个随机的客户端子集,而不是所有参与训练的客户端。我们可以用这种方法来调整参与训练的数据平衡。最后,我们在聚类和训练过程中加入了差分隐私和安全聚合,以提高所提出的聚类联邦学习框架的隐私和安全性。
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CHFDS: Clustered-based Hierarchical Federated Learning Framework with Differential Privacy and Secure Aggregation
Federated learning is proposed to solve data privacy and security issues for traditional machine learning, which requires the training dataset to be stored locally on a machine or data center for training. However, federated learning may have problems like Non-Independent and Identically Distributed (Non-IID) data and private security. Non-IID can lead to lower training accuracy than expected, and there may be a risk of privacy leakage in the data uploaded by clients. Therefore, this paper proposes CHFDS: Clustered-based Hierarchical Federated Learning Framework with Differential Privacy and Secure Aggregation. Before training begins, we cluster all clients so that the data distribution between clients in each group is similar. This means only a random subset of clients from each cluster is selected in each training round instead of all clients participating in the training. We can use this method to adjust the data balance of participating training. Finally, we add differential privacy and secure aggregation to the clustering and training process to improve the privacy and security of the proposed clustered federated learning framework.
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