A Survey of Graph Unlearning
Anwar Said, Ngoc N. Tran, Yuying Zhao, Tyler Derr, Mudassir Shabbir, Waseem Abbas, Xenofon Koutsoukos

TL;DR
This survey comprehensively reviews graph unlearning techniques, emphasizing their importance for data privacy, robustness, and ethical AI, and discusses diverse applications and future research directions.
Contribution
It provides the first systematic taxonomy and overview of graph unlearning methods, clarifying concepts and evaluation metrics for researchers.
Findings
Various graph unlearning approaches are categorized and analyzed.
Applications span social networks, adversarial settings, and IoT environments.
Highlights promising future research directions in the field.
Abstract
Graph unlearning emerges as a crucial advancement in the pursuit of responsible AI, providing the means to remove sensitive data traces from trained models, thereby upholding the \textit{right to be forgotten}. It is evident that graph machine learning exhibits sensitivity to data privacy and adversarial attacks, necessitating the application of graph unlearning techniques to address these concerns effectively. In this comprehensive survey paper, we present the first systematic review of graph unlearning approaches, encompassing a diverse array of methodologies and offering a detailed taxonomy and up-to-date literature overview to facilitate the understanding of researchers new to this field. To ensure clarity, we provide lucid explanations of the fundamental concepts and evaluation measures used in graph unlearning, catering to a broader audience with varying levels of expertise.…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Advanced Graph Neural Networks · Ethics and Social Impacts of AI
