Graph neural networks (GNNs) have emerged as a series of competent graph learning methods for diverse real-world scenarios, ranging from daily applications like recommendation systems and question answering to cutting-edge technologies such as drug discovery in life sciences and n-body simulation in astrophysics. However, task performance is not the only requirement for GNNs. Performance-oriented GNNs have exhibited potential adverse effects like vulnerability to adversarial attacks, unexplainable discrimination against disadvantaged groups, or excessive resource consumption in edge computing environments. To avoid these unintentional harms, it is necessary to build competent GNNs characterised by trustworthiness. To this end, we propose a comprehensive roadmap to build trustworthy GNNs from the view of the various computing technologies involved. In this survey, we introduce basic concepts and comprehensively summarise existing efforts for trustworthy GNNs from six aspects, including robustness, explainability, privacy, fairness, accountability, and environmental well-being. Additionally, we highlight the intricate cross-aspect relations between the above six aspects of trustworthy GNNs. Finally, we present a thorough overview of trending directions for facilitating the research and industrialisation of trustworthy GNNs.
翻译:图表神经网络(GNNs)是一系列适用于不同现实世界情景的合格图表学习方法,从日常应用,如建议系统和问题回答,到尖端技术,如生命科学中的药物发现和天体物理学中的非体模拟,但任务绩效并非全球NNs的唯一要求。面向性能的GNS展示了潜在的不利影响,如易受对抗性攻击、对弱势群体无法解释的歧视或边缘计算环境中过度的资源消耗。为了避免这些无意的伤害,有必要建立以可信赖性为特征的合格的GNNs。为此目的,我们从各种计算机技术的角度提出建立可靠的GNNs的全面路线图。在这次调查中,我们从六个方面,包括强健性、解释性、隐私、公平性、问责制和环境福祉等方面,为可信赖的GNNs提出基本概念和全面总结现有努力。此外,我们强调可信赖的GNPs以上六个方面错综复杂的交叉关系。最后,我们全面概述了促进可信赖的GNNS的研究和工业化的趋势方向。