Deep graph learning has achieved remarkable progresses in both business and scientific areas ranging from finance and e-commerce, to drug and advanced material discovery. Despite these progresses, how to ensure various deep graph learning algorithms behave in a socially responsible manner and meet regulatory compliance requirements becomes an emerging problem, especially in risk-sensitive domains. Trustworthy graph learning (TwGL) aims to solve the above problems from a technical viewpoint. In contrast to conventional graph learning research which mainly cares about model performance, TwGL considers various reliability and safety aspects of the graph learning framework including but not limited to robustness, explainability, and privacy. In this survey, we provide a comprehensive review of recent leading approaches in the TwGL field from three dimensions, namely, reliability, explainability, and privacy protection. We give a general categorization for existing work and review typical work for each category. To give further insights for TwGL research, we provide a unified view to inspect previous works and build the connection between them. We also point out some important open problems remaining to be solved in the future developments of TwGL.
翻译:尽管取得了这些进展,但如何确保各种深图学习算法以对社会负责的方式运作,并满足监管合规要求已成为一个新出现的问题,特别是在风险敏感领域。值得信赖的图表学习(TwGL)旨在从技术角度解决上述问题。与主要关注模型性能的传统图形学习研究相比,TwGL考虑图学习框架的各种可靠性和安全方面,包括但不限于稳健性、可解释性和隐私。在这次调查中,我们从三个方面,即可靠性、可解释性和隐私保护,全面审查了TwGL领域最近的主要做法。我们对现有工作进行一般性分类,并审查每一类的典型工作。为了进一步深入了解TwGL研究,我们提供了一种统一的观点,以检查以往的工程,建立它们之间的联系。我们还指出了在TwGL的未来发展中有待解决的一些重要的未决问题。