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DIFFERENTIALLY PRIVATE MEAN AND COVARIANCE ESTIMATION
PhD Qualifying Examination Title: "DIFFERENTIALLY PRIVATE MEAN AND COVARIANCE ESTIMATION" by Miss Yuting LIANG Abstract: Differential Privacy (DP) has become the definition of choice for privacy protection due to its strong guarantee and immunity to reverse-engineering. Roughly speaking, an algorithm is differentially private for a query if the presence or absence of any particular record will not impact the query output significantly. However, for the simple mean query, the empirical mean is inherently unstable relative to change in even a single record. In this survey, we discuss works in the most fundamental data analytics tasks: that of mean and covariance estimation. In particular, we present the works in both the empirical and statistical settings, and from univariate to high-dimensional datasets. We start by introducing the basic tools of DP, and discuss how different works deal with the potentially unbounded sensitivities using these tools. We also discuss how some of the univariate estimators are extended to work in high dimensions, which (fortunately) are not by simple coordinate-wise estimation. We conclude with some potential research directions for future work. Date: Tuesday, 26 July 2022 Time: 9:00am to 11:00am Zoom Meeting: https://hkust.zoom.us/j/5688510375 Committee Members: Prof. Ke Yi (Supervisor) Prof. Mordecai Golin (Chairperson) Prof. Siu-Wing Cheng Prof. Yuan Yao (MATH) **** ALL are Welcome ****