A Cluster-based Privacy-Enhanced Hierarchical Federated Learning Framework with Secure Aggregation

Chia Yu Lin, Chih Hung Han, Wei Chih Yin, Ted T. Kuo

研究成果: 書貢獻/報告類型會議論文篇章同行評審

摘要

Traditional machine learning typically requires training datasets on local machines or data centers. However, this approach may raise concerns related to data privacy and security. To address these issues, federated learning was proposed. However, federated learning, which involves a server communicating with multiple client devices, can significantly burden the server. Even when using hierarchical federated learning, there is still a considerable cost associated with communication at intermediate nodes. To further alleviate the communication cost burden on intermediate nodes, the most direct approach is to have each intermediate node select a subset of clients for training and accept their model parameters. However, client training data distributions are not uniform, leading to a state known as Non-Independent and Identically Distributed (Non-lID). Unthinkingly selecting clients for training may result in more imbalanced data selection and bias the model training in specific directions. Therefore, we propose the 'post-clustering selection', where clients with similar data distributions are grouped together, and a certain proportion of clients are selected as representatives for training. This approach allows intermediate nodes to reduce communication costs while avoiding the selection of clients with highly imbalanced data distributions. Finally, we integrate differential privacy and secure aggregation to enhance privacy protection and present a framework called 'Cluster-based Privacy-Enhanced Hierarchical Federated Learning Framework with Secure Aggregation (CPE-HFL). From experiments, we reduce the communication volume by up to 29% while maintaining accuracy. Additionally, the accuracy improves more in cases with clustering than those without clustering. The proposed framework can reduce communication costs and effectively protect clients' privacy while maintaining model accuracy.

原文???core.languages.en_GB???
主出版物標題2024 International Conference on Computing, Networking and Communications, ICNC 2024
發行者Institute of Electrical and Electronics Engineers Inc.
頁面994-999
頁數6
ISBN(電子)9798350370997
DOIs
出版狀態已出版 - 2024
事件2024 International Conference on Computing, Networking and Communications, ICNC 2024 - Big Island, United States
持續時間: 19 2月 202422 2月 2024

出版系列

名字2024 International Conference on Computing, Networking and Communications, ICNC 2024

???event.eventtypes.event.conference???

???event.eventtypes.event.conference???2024 International Conference on Computing, Networking and Communications, ICNC 2024
國家/地區United States
城市Big Island
期間19/02/2422/02/24

指紋

深入研究「A Cluster-based Privacy-Enhanced Hierarchical Federated Learning Framework with Secure Aggregation」主題。共同形成了獨特的指紋。

引用此