Federated Continual Learning with Weighted Inter-Client Transfer

Abstract

There has been a surge of interest in continual learning and federated learning, both of which are important in deep neural networks in real-world scenarios. Yet little research has been done regarding the scenario where each client learns on a sequence of tasks from private local data stream. This problem of federated continual learning poses new challenges to continual learning, such as utilizing knowledge from other clients, while preventing interference from irrelevant knowledge. To resolve these issues, we propose a novel federated continual learning framework, Weighted Inter-client Transfer (FedWeIT), which decomposes the network weights into global federated parameters and sparse task-specific parameters, and each client receives selective knowledge from other clients by taking a weighted combination of their task-specific parameters. FedWeIT minimizes interference between incompatible tasks, and also allows positive knowledge transfer across clients during learning. We validate our FedWeIT against existing federated learning and continual learning methods under varying degree of task similarity across clients, and our model significantly outperforms them with large reduction in the communication cost.

Cite

Text

Yoon et al. "Federated Continual Learning with Weighted Inter-Client Transfer." ICML 2020 Workshops: LifelongML, 2020.

Markdown

[Yoon et al. "Federated Continual Learning with Weighted Inter-Client Transfer." ICML 2020 Workshops: LifelongML, 2020.](https://mlanthology.org/icmlw/2020/yoon2020icmlw-federated/)

BibTeX

@inproceedings{yoon2020icmlw-federated,
  title     = {{Federated Continual Learning with Weighted Inter-Client Transfer}},
  author    = {Yoon, Jaehong and Jeong, Wonyong and Lee, Giwoong and Yang, Eunho and Hwang, Sung Ju},
  booktitle = {ICML 2020 Workshops: LifelongML},
  year      = {2020},
  url       = {https://mlanthology.org/icmlw/2020/yoon2020icmlw-federated/}
}