Property inference attacks reveal statistical properties about a training set but are difficult to distinguish from the primary purposes of statistical machine learning, which is to produce models that capture statistical properties about a distribution. Motivated by Yeom et al.'s membership inference framework, we propose a formal and generic definition of property inference attacks. The proposed notion describes attacks that can distinguish between possible training distributions, extending beyond previous property inference attacks that infer the ratio of a particular type of data in the training data set. In this paper, we show how our definition captures previous property inference attacks as well as a new attack that reveals the average degree of nodes of a training graph and report on experiments giving insight into the potential risks of property inference attacks.
翻译:财产推断攻击揭示了一组培训的统计属性,但很难与统计机学习的主要目的区分开来,后者是生成关于分布统计属性的模型。我们受Yeom等人成员推断框架的驱动,提出了财产推断攻击的正式和通用定义。拟议的概念描述了可以区分可能的培训分布的攻击,超出了以前的财产推断攻击的范围,这些攻击可以推断出培训数据集中特定类型数据的比例。我们在本文件中说明了我们的定义如何捕捉了以前的财产推断攻击以及新的攻击,显示培训图表的平均节点,并报告了实验,以洞察财产推断攻击的潜在风险。