Bayesian Strategies for Differential Privacy and Risk Assessment
Date
2025
Authors
Advisors
Journal Title
Journal ISSN
Volume Title
Repository Usage Stats
views
downloads
Abstract
This thesis covers four contributions at the intersection of differential privacy and Bayesian methods. The first contribution is a Bayesian method for assessing statistical disclosure risks for count data released under zero-concentrated differential privacy in settings with a hierarchical structure. The second contribution is a framework for setting the privacy budget for differential privacy based on relationships between differential privacy and Bayesian posterior probabilities of disclosure. The third contribution is an examination of prior selection for Bayesian inference using statistics released under differential privacy. The fourth contribution is a series of results relating differential privacy to disclosure risk criteria, such as bounds on an adversary’s posterior probability, posterior-to-prior ratio, and posterior-to-prior difference
Type
Department
Description
Provenance
Subjects
Citation
Permalink
Citation
Kazan, Zekican (2025). Bayesian Strategies for Differential Privacy and Risk Assessment. Dissertation, Duke University. Retrieved from https://hdl.handle.net/10161/32714.
Collections
Except where otherwise noted, student scholarship that was shared on DukeSpace after 2009 is made available to the public under a Creative Commons Attribution / Non-commercial / No derivatives (CC-BY-NC-ND) license. All rights in student work shared on DukeSpace before 2009 remain with the author and/or their designee, whose permission may be required for reuse.