Authors
Liangxi Liu, Xi Jiang, Feng Zheng, Hong Chen, Guo-Jun Qi, Heng Huang, Ling Shao
Publication date
2023/10/9
Journal
IEEE Transactions on Pattern Analysis and Machine Intelligence
Publisher
IEEE
Description
Federated learning (FL) allows multiple clients to collaboratively learn a globally shared model through cycles of model aggregation and local model training, without the need to share data. Most existing FL methods train local models separately on different clients, and then simply average their parameters to obtain a centralized model on the server side. However, these approaches generally suffer from large aggregation errors and severe local forgetting, which are particularly bad in heterogeneous data settings. To tackle these issues, in this paper, we propose a novel FL framework that uses online Laplace approximation to approximate posteriors on both the client and server side. On the server side, a multivariate Gaussian product mechanism is employed to construct and maximize a global posterior, largely reducing the aggregation errors induced by large discrepancies between local models. On the client …
Total citations
20222023202441220
Scholar articles
L Liu, X Jiang, F Zheng, H Chen, GJ Qi, H Huang… - IEEE Transactions on Pattern Analysis and Machine …, 2023