We study Differential Privacy in the abstract setting of Probability on metric spaces. Numerical, categorical and functional data can be handled in a uniform manner in this setting. We demonstrate how mechanisms based on data sanitisation and those that rely on adding noise to query responses fit within this framework. We prove that once the sanitisation is differentially private, then so is the query response for any query. We show how to construct sanitisations for high-dimensional databases using simple 1-dimensional mechanisms. We also provide lower bounds on the expected error for differentially private sanitisations in the general metric space setting. Finally, we consider the question of sufficient sets for differ- ential p...
Differential privacy is a de facto standard for statistical computations over databases that contain...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...
We study Differential Privacy in the abstract setting of Probability on metric spaces. Numerical, c...
We study Differential Privacy in the abstract setting of Probability on metric spaces. Numerical, c...
We study the privacy-utility trade-off in the context of metric differential privacy. Ghosh et al. i...
Differential Privacy is one of the most prominent frameworks used to deal with disclosure prevention...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for di...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...
Abstract. Differential Privacy is one of the most prominent frameworks used to deal with disclosure ...
Differential privacy, introduced by Dwork et al. in 2006, has become the benchmark for data privacy ...
The meaning of differential privacy (DP) is tightly bound with the notion of distance on databases, ...
Differential privacy, introduced by Dwork et al. in 2006, has become the benchmark for data privacy ...
Differential privacy, introduced by Dwork et al. in 2006, has become the benchmark for data privacy ...
International audienceWe study the privacy-utility trade-off in the context of metric differential p...
Differential privacy is a de facto standard for statistical computations over databases that contain...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...
We study Differential Privacy in the abstract setting of Probability on metric spaces. Numerical, c...
We study Differential Privacy in the abstract setting of Probability on metric spaces. Numerical, c...
We study the privacy-utility trade-off in the context of metric differential privacy. Ghosh et al. i...
Differential Privacy is one of the most prominent frameworks used to deal with disclosure prevention...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for di...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...
Abstract. Differential Privacy is one of the most prominent frameworks used to deal with disclosure ...
Differential privacy, introduced by Dwork et al. in 2006, has become the benchmark for data privacy ...
The meaning of differential privacy (DP) is tightly bound with the notion of distance on databases, ...
Differential privacy, introduced by Dwork et al. in 2006, has become the benchmark for data privacy ...
Differential privacy, introduced by Dwork et al. in 2006, has become the benchmark for data privacy ...
International audienceWe study the privacy-utility trade-off in the context of metric differential p...
Differential privacy is a de facto standard for statistical computations over databases that contain...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...