Private data analytics systems preferably provide required analytic accuracy to analysts and specified privacy to individuals whose data is analyzed. Devising a general system that works for a broad range of datasets and analytic scenarios has proven to be difficult. Despite the advent of differentially private systems with proven formal privacy guarantees, industry still uses inferior ad-hoc mechanisms that provide better analytic accuracy. Differentially private mechanisms often need to add large amounts of noise to statistical results, which impairs their usability. In my thesis I follow two approaches to improve the usability of private data analytics systems in general and differentially private systems in particular. First, I re...
Collecting distributed data from millions of individuals for the purpose of analytics is a common sc...
Organizations belonging to the government, commercial, and non-profit industries collect and store l...
Recent years have witnessed the adoption of differential privacy (DP) in practical database query sy...
With the emergence of smart devices and data-driven applications, personal data are being dramatical...
Data analytics is being widely used not only as a business tool, which empowers organizations to dri...
Differential privacy has emerged as the de facto gold standard in protecting the privacy of individu...
Data analysis is inherently adaptive, where previous results may influence which tests are carried o...
With the recent advances in data analytics and machine learning, organizations are becoming more and...
As both the scope and scale of data collection increases, an increasingly large amount of sensitive ...
Recent growth in the size and scope of databases has resulted in more research into making productiv...
International audienceOpenData movement around the globe is demanding more access to information whi...
Organizations are increasingly collecting sensitive information about individuals. Extracting value ...
Since its introduction in 2006, differential privacy has emerged as a predominant statistical tool f...
Many large databases of personal information currently exist in the hands of corporations, nonprofit...
Large-scale data processing prompts a number of important challenges, including guaranteeing that co...
Collecting distributed data from millions of individuals for the purpose of analytics is a common sc...
Organizations belonging to the government, commercial, and non-profit industries collect and store l...
Recent years have witnessed the adoption of differential privacy (DP) in practical database query sy...
With the emergence of smart devices and data-driven applications, personal data are being dramatical...
Data analytics is being widely used not only as a business tool, which empowers organizations to dri...
Differential privacy has emerged as the de facto gold standard in protecting the privacy of individu...
Data analysis is inherently adaptive, where previous results may influence which tests are carried o...
With the recent advances in data analytics and machine learning, organizations are becoming more and...
As both the scope and scale of data collection increases, an increasingly large amount of sensitive ...
Recent growth in the size and scope of databases has resulted in more research into making productiv...
International audienceOpenData movement around the globe is demanding more access to information whi...
Organizations are increasingly collecting sensitive information about individuals. Extracting value ...
Since its introduction in 2006, differential privacy has emerged as a predominant statistical tool f...
Many large databases of personal information currently exist in the hands of corporations, nonprofit...
Large-scale data processing prompts a number of important challenges, including guaranteeing that co...
Collecting distributed data from millions of individuals for the purpose of analytics is a common sc...
Organizations belonging to the government, commercial, and non-profit industries collect and store l...
Recent years have witnessed the adoption of differential privacy (DP) in practical database query sy...