Federated Unlearning: A Perspective of Stability and Fairness
Abstract
This paper explores the multifaceted consequences of federated unlearning (FU) with data heterogeneity. We introduce key metrics for FU assessment, concentrating on verification, global stability, and local fairness, and investigate the inherent trade-offs. Furthermore, we formulate the unlearning process with data heterogeneity through an optimization framework. Our key contribution lies in a comprehensive theoretical analysis of the trade-offs in FU and provides insights into data heterogeneity's impacts on FU. Leveraging these insights, we propose FU mechanisms to manage the trade-offs, guiding further development for FU mechanisms.
Cite
Text
Shao et al. "Federated Unlearning: A Perspective of Stability and Fairness." ICLR 2024 Workshops: PML, 2024.Markdown
[Shao et al. "Federated Unlearning: A Perspective of Stability and Fairness." ICLR 2024 Workshops: PML, 2024.](https://mlanthology.org/iclrw/2024/shao2024iclrw-federated/)BibTeX
@inproceedings{shao2024iclrw-federated,
title = {{Federated Unlearning: A Perspective of Stability and Fairness}},
author = {Shao, Jiaqi and Lin, Tao and Cao, Xuanyu and Luo, Bing},
booktitle = {ICLR 2024 Workshops: PML},
year = {2024},
url = {https://mlanthology.org/iclrw/2024/shao2024iclrw-federated/}
}