Graph Machine Learning (GraphML), whereby classical machine learning is generalized to irregular graph domains, has enjoyed a recent renaissance, leading to a dizzying array of models and their applications in several domains. With its growing applicability to sensitive domains and regulations by governmental agencies for trustworthy AI systems, researchers have started looking into the issues of transparency and privacy of graph learning. However, these topics have been mainly investigated independently. In this position paper, we provide a unified perspective on the interplay of privacy and transparency in GraphML. In particular, we describe the challenges and possible research directions for a formal investigation of privacy-transparency tradeoffs in GraphML.
翻译:古典机器学习法(GraphML)是典型机器学习法(GraphML)普遍适用于非常规图形领域的典型机器学习法(GraphML),它最近实现了复兴,导致一系列模型及其在几个领域的应用令人头晕,随着政府机构对可信赖的AI系统敏感领域和条例的日益适用,研究人员开始研究图学学习的透明度和隐私问题,然而,这些专题主要是独立调查的,在本立场文件中,我们对GragML的隐私和透明度的相互作用提供了统一的观点。我们特别描述了对GrapML的隐私透明度权衡进行正式调查的挑战和可能的研究方向。