The synthetic data approach to data confidentiality has been actively researched on, and for the past decade or so, a good number of high quality work on developing innovative synthesizers, creating appropriate utility measures and risk measures, among others, have been published. Comparing to a large volume of work on synthesizers development and utility measures creation, measuring risks has overall received less attention. This paper focuses on the detailed construction of some Bayesian methods proposed for estimating disclosure risks in synthetic data. In the processes of presenting attribute and identification disclosure risks evaluation methods, we highlight key steps, emphasize Bayesian thinking, illustrate with real application examples, and discuss challenges and future research directions. We hope to give the readers a comprehensive view of the Bayesian estimation procedures, enable synthetic data researchers and producers to use these procedures to evaluate disclosure risks, and encourage more researchers to work in this important growing field.
翻译:对数据保密的合成数据方法进行了积极研究,在过去十年左右,已经出版了大量高质量的工作,涉及开发创新合成器,制定适当的实用措施和风险措施等。与合成器开发和制定实用措施的大量工作相比,衡量风险总体上受到的关注较少。本文件侧重于为估算合成数据披露风险而建议的一些巴伊西亚方法的详细构建。在提出属性和识别披露风险评价方法的过程中,我们强调关键步骤,强调巴耶斯思维,用实际应用实例进行说明,并讨论挑战和今后的研究方向。我们希望让读者全面了解巴伊西亚估算程序,使合成数据研究人员和制作者能够利用这些程序评估披露风险,并鼓励更多的研究人员在这一重要增长领域开展工作。