We study the problem of estimating finite sample confidence intervals of the mean of a normal population under the constraint of differential privacy. We consider both the known and unknown variance cases and construct differentially private algorithms to estimate confidence intervals. Crucially, our algorithms guarantee a finite sample coverage, as opposed to an asymptotic coverage. Unlike most previous differentially private algorithms, we do not require the domain of the samples to be bounded. We also prove lower bounds on the expected size of any differentially private confidence set showing that our the parameters are optimal up to polylogarithmic factors
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Differential privacy is a de facto standard for statistical computations over databases that contain...
We present a method for producing unbiased parameter estimates and valid confidence intervals under ...
Differential privacy (DP) uses a probabilistic framework to measure the level of privacy protection ...
This dissertation studies the trade-off between differential privacy and statistical accuracy in par...
Differential privacy is a cryptographically-motivated approach to privacy that has become a very act...
International audienceThe challenge of producing accurate statistics while respecting the privacy of...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for di...
239 pagesIn modern settings of data analysis, we may be running our algorithms on datasets that are ...
Summary: In statistical disclosure control, the goal of data analysis is twofold: the information re...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...
Algorithms such as Differentially Private SGD enable training machine learning models with formal pr...
The notion of differential privacy has been introduced to enable statistical analyses to be carried ...
Code and data for the published article. We develop differentially private methods for estimating v...
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Differential privacy is a de facto standard for statistical computations over databases that contain...
We present a method for producing unbiased parameter estimates and valid confidence intervals under ...
Differential privacy (DP) uses a probabilistic framework to measure the level of privacy protection ...
This dissertation studies the trade-off between differential privacy and statistical accuracy in par...
Differential privacy is a cryptographically-motivated approach to privacy that has become a very act...
International audienceThe challenge of producing accurate statistics while respecting the privacy of...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for di...
239 pagesIn modern settings of data analysis, we may be running our algorithms on datasets that are ...
Summary: In statistical disclosure control, the goal of data analysis is twofold: the information re...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...
Algorithms such as Differentially Private SGD enable training machine learning models with formal pr...
The notion of differential privacy has been introduced to enable statistical analyses to be carried ...
Code and data for the published article. We develop differentially private methods for estimating v...
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Differential privacy is a de facto standard for statistical computations over databases that contain...