A Comprehensive Survey on Trustworthy Graph Neural Networks: Privacy, Robustness, Fairness, and Explainability
Enyan Dai, Tianxiang Zhao, Huaisheng Zhu, Junjie Xu, Zhimeng Guo, Hui, Liu, Jiliang Tang, Suhang Wang

TL;DR
This survey reviews recent advances in trustworthy Graph Neural Networks, focusing on privacy, robustness, fairness, and explainability, highlighting methods, frameworks, and future research directions to enhance trustworthiness.
Contribution
It provides a comprehensive taxonomy and framework for trustworthy GNNs across multiple aspects, integrating recent research and identifying future directions.
Findings
Taxonomy of privacy, robustness, fairness, and explainability methods.
Frameworks for developing trustworthy GNNs.
Discussion of future research directions and interconnections.
Abstract
Graph Neural Networks (GNNs) have made rapid developments in the recent years. Due to their great ability in modeling graph-structured data, GNNs are vastly used in various applications, including high-stakes scenarios such as financial analysis, traffic predictions, and drug discovery. Despite their great potential in benefiting humans in the real world, recent study shows that GNNs can leak private information, are vulnerable to adversarial attacks, can inherit and magnify societal bias from training data and lack interpretability, which have risk of causing unintentional harm to the users and society. For example, existing works demonstrate that attackers can fool the GNNs to give the outcome they desire with unnoticeable perturbation on training graph. GNNs trained on social networks may embed the discrimination in their decision process, strengthening the undesirable societal bias.…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Advanced Graph Neural Networks · Ethics and Social Impacts of AI
