Differential privacy offers a formal framework for reasoning about the privacy and accuracy of computations on private data. It also offers a rich set of building blocks for constructing private data analyses. When carefully calibrated, these analyses simultaneously guarantee the privacy of the individuals contributing their data, and the accuracy of the data analyses results, inferring useful properties about the population. The compositional nature of differential privacy has motivated the design and implementation of several programming languages aimed at helping a data analyst in programming differentially private analyses. However, most of the programming languages for differential privacy proposed so far provide support for reasoning ...
This dissertation explores techniques for automating program analysis, with a focus on validating an...
In a world where artificial intelligence and data science become omnipresent, data sharing is increa...
AbstractDifferential privacy is a promising approach to privacy preserving data analysis with a well...
Differential privacy offers a formal framework for reasoning about the privacy and accuracy of compu...
Differential privacy offers a formal framework for reasoning about the privacy and accuracy of compu...
Differential privacy is a de facto standard for statistical computations over databases that contain...
With recent privacy failures in the release of personal data, differential privacy received consider...
Differential privacy (Dwork, 2006; Dwork et al., 2006a) has achieved prominence over the past decade...
Data privacy is an ever important aspect of data analyses. Historically, a plethora of privacy techn...
Histograms and synthetic data are of key importance in data analysis. However, researchers have show...
We want assurances that sensitive information will not be disclosed when aggregate data derived from...
As both the scope and scale of data collection increases, an increasingly large amount of sensitive ...
This dissertation explores techniques for automating program analysis, with a focus on validating an...
Static program analysis, once seen primarily as a tool for optimising programs, is now increasingly ...
Recent years have witnessed the adoption of differential privacy (DP) in practical database query sy...
This dissertation explores techniques for automating program analysis, with a focus on validating an...
In a world where artificial intelligence and data science become omnipresent, data sharing is increa...
AbstractDifferential privacy is a promising approach to privacy preserving data analysis with a well...
Differential privacy offers a formal framework for reasoning about the privacy and accuracy of compu...
Differential privacy offers a formal framework for reasoning about the privacy and accuracy of compu...
Differential privacy is a de facto standard for statistical computations over databases that contain...
With recent privacy failures in the release of personal data, differential privacy received consider...
Differential privacy (Dwork, 2006; Dwork et al., 2006a) has achieved prominence over the past decade...
Data privacy is an ever important aspect of data analyses. Historically, a plethora of privacy techn...
Histograms and synthetic data are of key importance in data analysis. However, researchers have show...
We want assurances that sensitive information will not be disclosed when aggregate data derived from...
As both the scope and scale of data collection increases, an increasingly large amount of sensitive ...
This dissertation explores techniques for automating program analysis, with a focus on validating an...
Static program analysis, once seen primarily as a tool for optimising programs, is now increasingly ...
Recent years have witnessed the adoption of differential privacy (DP) in practical database query sy...
This dissertation explores techniques for automating program analysis, with a focus on validating an...
In a world where artificial intelligence and data science become omnipresent, data sharing is increa...
AbstractDifferential privacy is a promising approach to privacy preserving data analysis with a well...