Advancing Differentially Private Optimization: Efficiency, Utility, and Applications

dc.contributor.advisorLee, Yin Tat
dc.contributor.authorLiu, Daogao
dc.date.accessioned2025-01-23T20:07:12Z
dc.date.available2025-01-23T20:07:12Z
dc.date.issued2025-01-23
dc.date.submitted2024
dc.descriptionThesis (Ph.D.)--University of Washington, 2024
dc.description.abstractWith the rapid development and widespread application of modern machine learning and artificial intelligence—particularly following the emergence of large language models—privacy has become a critical concern.Differential privacy, a rigorous mathematical framework for defining privacy, has emerged as the de facto standard. This thesis addresses two fundamental problems in privacy-preserving machine learning: differentially private empirical risk minimization (DP-ERM) and differentially private stochastic (convex) optimization (DP-SCO). Our goal is to design more efficient algorithms for these problems while achieving better and optimal privacy-utility trade-offs. The thesis is structured into five parts: (1) Part I focuses on improving and achieving near-optimal gradient or function value computation complexity. (2) Part II extends the analysis under alternative geometries and norms beyond the classic Euclidean spaces. (3) Part III investigates non-convex functions, which are increasingly common in practice and gaining significant attention. (4) Part IV examines the user-level differential privacy setting, a practical scenario where users contribute multiple items, as opposed to the classical item-level DP assumption of a single item per user. (5) Part V explores additional settings, including online optimization, heavy-tailed distributions, and low-rank structures. This work comprehensively explores these challenges, proposing innovative methods to enhance algorithmic efficiency and optimize the privacy-utility trade-off.
dc.embargo.termsOpen Access
dc.format.mimetypeapplication/pdf
dc.identifier.otherLiu_washington_0250E_27723.pdf
dc.identifier.urihttps://hdl.handle.net/1773/52766
dc.language.isoen_US
dc.rightsCC BY-NC-ND
dc.subjectComputer science
dc.subject.otherComputer science and engineering
dc.titleAdvancing Differentially Private Optimization: Efficiency, Utility, and Applications
dc.typeThesis

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