Differential privacy is a de facto standard for statistical computations over databases that contain private data. The strength of differential privacy lies in a rigorous mathematical definition which guarantees individual privacy and yet allows for accurate statistical results. Thanks to its mathematical definition, differential privacy is also a natural target for formal analysis. A broad line of work uses logical methods for proving privacy. However, these methods are not complete, and only partially automated. A recent and complementary line of work uses statistical methods for finding privacy violations. However, the methods only provide statistical guarantees (but no proofs). We propose the first decision procedure for checking diffe...
Differential privacy is becoming a gold standard notion of privacy, it offers a guaranteed bound on ...
We study the problem of verifying differential privacy for loop-free programs with probabilistic cho...
With recent privacy failures in the release of personal data, differential privacy received consider...
Differential privacy is a de facto standard for statistical computations over databases that contain...
Differential privacy (Dwork, 2006; Dwork et al., 2006a) has achieved prominence over the past decade...
AbstractDifferential privacy is a promising approach to privacy preserving data analysis with a well...
Many large databases of personal information currently exist in the hands of corporations, nonprofit...
Computing technologies today have made it much easier to gather personal data, ranging from GPS loca...
A differentially private algorithm adds randomness to its computations to ensure that its output rev...
This dissertation explores techniques for automating program analysis, with a focus on validating an...
This dissertation explores techniques for automating program analysis, with a focus on validating an...
Since the introduction of differential privacy to the field of privacy preserving data analysis, man...
Differential privacy is a rigorous, worst-case notion of privacy-preserving computation. Informally,...
Differential privacy is a mathematical definition of privacy for statistical data analysis. It guara...
As both the scope and scale of data collection increases, an increasingly large amount of sensitive ...
Differential privacy is becoming a gold standard notion of privacy, it offers a guaranteed bound on ...
We study the problem of verifying differential privacy for loop-free programs with probabilistic cho...
With recent privacy failures in the release of personal data, differential privacy received consider...
Differential privacy is a de facto standard for statistical computations over databases that contain...
Differential privacy (Dwork, 2006; Dwork et al., 2006a) has achieved prominence over the past decade...
AbstractDifferential privacy is a promising approach to privacy preserving data analysis with a well...
Many large databases of personal information currently exist in the hands of corporations, nonprofit...
Computing technologies today have made it much easier to gather personal data, ranging from GPS loca...
A differentially private algorithm adds randomness to its computations to ensure that its output rev...
This dissertation explores techniques for automating program analysis, with a focus on validating an...
This dissertation explores techniques for automating program analysis, with a focus on validating an...
Since the introduction of differential privacy to the field of privacy preserving data analysis, man...
Differential privacy is a rigorous, worst-case notion of privacy-preserving computation. Informally,...
Differential privacy is a mathematical definition of privacy for statistical data analysis. It guara...
As both the scope and scale of data collection increases, an increasingly large amount of sensitive ...
Differential privacy is becoming a gold standard notion of privacy, it offers a guaranteed bound on ...
We study the problem of verifying differential privacy for loop-free programs with probabilistic cho...
With recent privacy failures in the release of personal data, differential privacy received consider...