Federated Graph Unlearning
Yuming Ai, Xunkai Li, Jiaqi Chao, Bowen Fan, Zhengyu Wu, Yinlin Zhu, Rong-Hua Li, Guoren Wang

TL;DR
This paper presents a unified framework for federated graph unlearning that effectively removes specific data or entire client contributions, ensuring privacy compliance while maintaining model accuracy.
Contribution
It introduces a comprehensive, bifurcated approach employing prototype gradients and adversarial graphs for both fine-grained and complete client unlearning in federated graph systems.
Findings
Significant accuracy improvements over existing methods.
Effective removal of client data and influence.
Framework enhances other unlearning techniques as a plug-in.
Abstract
The demand for data privacy has led to the development of frameworks like Federated Graph Learning (FGL), which facilitate decentralized model training. However, a significant operational challenge in such systems is adhering to the right to be forgotten. This principle necessitates robust mechanisms for two distinct types of data removal: the selective erasure of specific entities and their associated knowledge from local subgraphs and the wholesale removal of a user's entire dataset and influence. Existing methods often struggle to fully address both unlearning requirements, frequently resulting in incomplete data removal or the persistence of residual knowledge within the system. This work introduces a unified framework, conceived to provide a comprehensive solution to these challenges. The proposed framework employs a bifurcated strategy tailored to the specific unlearning request.…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Advanced Graph Neural Networks · Machine Learning in Healthcare
