Litcius/Paper detail

Transparent Privacy is Principled Privacy

Ruobin Gong

2022Harvard Data Science Review17 citationsDOIOpen Access PDF

Abstract

In a technical treatment, this article establishes the necessity of transparent privacy for drawing unbiased statistical inference for a wide range of scientific questions. Transparency is a distinct feature enjoyed by differential privacy: the probabilistic mechanism with which the data are privatized can be made public without sabotaging the privacy guarantee. Uncertainty due to transparent privacy may be conceived as a dynamic and controllable component from the total survey error perspective. As the 2020 U.S. Decennial Census adopts differential privacy, constraints imposed on the privatized data products through optimization constitute a threat to transparency and result in limited statistical usability. Transparent privacy presents a viable path toward principled inference from privatized data releases, and shows great promise toward improved reproducibility, accountability, and public trust in modern data curation.

Topics & Concepts

Differential privacyTransparency (behavior)Computer scienceInformation privacyProbabilistic logicInternet privacyUsabilityPrivacy softwarePrivacy by DesignAccountabilityComputer securityInferenceData scienceData miningPolitical scienceLawArtificial intelligenceHuman–computer interactionPrivacy-Preserving Technologies in DataStatistical Methods and Bayesian InferenceSurvey Methodology and Nonresponse