The application of graph analytics to various domains has yielded tremendous societal and economical benefits in recent years. However, the increasingly widespread adoption of graph analytics comes with a commensurate increase in the need to protect private information in graph data, especially in light of the many privacy breaches in real-world graph data that was supposed to preserve sensitive information. This paper provides a comprehensive survey of private graph data release algorithms that seek to achieve the fine balance between privacy and utility, with a specific focus on provably private mechanisms. Many of these mechanisms are natural extensions of the Differential Privacy framework to graph data, but we also investigate more general privacy formulations like Pufferfish Privacy that address some of the limitations of Differential Privacy. We also provide a wide-ranging survey of the applications of private graph data release mechanisms to social networks, finance, supply chain, and health care. This survey paper and the taxonomy it provides should benefit practitioners and researchers alike in the increasingly important area of private analytics and data release.
翻译:近些年来,在各个领域应用图表分析带来了巨大的社会和经济效益,然而,随着图表分析的日益广泛采用,在图表数据中保护私人信息的需求也相应增加,特别是考虑到真实世界图形数据中许多隐私被侵犯,而真实世界图形数据本应保存敏感信息。本文对私人图形数据发布算法进行了全面调查,以寻求在隐私和实用之间实现细微平衡,并特别侧重于可辨的私人机制。其中许多机制是不同隐私框架对图表数据的自然延伸,但我们也调查了普费鱼类隐私等更普遍的隐私配方,以解决不同隐私的一些局限性。我们还对私人图形数据发布机制在社会网络、金融、供应链和保健方面的应用进行了广泛的调查。这份调查文件和它所提供的分类方法应该使私人分析和数据发布这一日益重要领域的从业者和研究人员都受益。