IDEA: A Flexible Framework of Certified Unlearning for Graph Neural Networks
Yushun Dong, Binchi Zhang, Zhenyu Lei, Na Zou, Jundong Li

TL;DR
This paper introduces IDEA, a flexible framework for certified unlearning in Graph Neural Networks, capable of handling diverse unlearning requests with theoretical guarantees, regardless of GNN type or training objective.
Contribution
The paper presents a novel, generalizable framework for certified unlearning in GNNs that supports multiple unlearning requests and provides theoretical certification of effectiveness.
Findings
IDEA effectively handles four types of unlearning requests.
The framework provides theoretical guarantees for unlearning effectiveness.
Experimental results show IDEA's superiority over existing methods.
Abstract
Graph Neural Networks (GNNs) have been increasingly deployed in a plethora of applications. However, the graph data used for training may contain sensitive personal information of the involved individuals. Once trained, GNNs typically encode such information in their learnable parameters. As a consequence, privacy leakage may happen when the trained GNNs are deployed and exposed to potential attackers. Facing such a threat, machine unlearning for GNNs has become an emerging technique that aims to remove certain personal information from a trained GNN. Among these techniques, certified unlearning stands out, as it provides a solid theoretical guarantee of the information removal effectiveness. Nevertheless, most of the existing certified unlearning methods for GNNs are only designed to handle node and edge unlearning requests. Meanwhile, these approaches are usually tailored for either a…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Brain Tumor Detection and Classification
