We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for differential privacy we obtain necessary and sufficient conditions for differential privacy, a tight lower bound on the maximal expected error of a discrete mechanism and a characterisation of the optimal mechanism which minimises the maximal expected error within the class of mechanisms considered
In this paper, we consider the setting in which the output of a differentially private mechanism is ...
International audienceWe study the privacy-utility trade-off in the context of metric differential p...
We study Differential Privacy in the abstract setting of Probability on metric spaces. Numerical, c...
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...
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 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...
Local differential privacy has been proposed as a strong measure of privacy under data collec-tion s...
Differential privacy is a framework to quantify to what extent individual privacy in a statistical d...
Differential privacy is a framework to quantify to what extent individual privacy in a statistical d...
We examine a generalised Randomised Response (RR) technique in the context of differential privacy a...
We examine a generalised Randomised Response (RR) technique in the context of differential privacy a...
We examine a generalised randomised response (RR) technique in the context of differential privacy a...
In this paper, we consider the setting in which the output of a differentially private mechanism is ...
International audienceWe study the privacy-utility trade-off in the context of metric differential p...
We study Differential Privacy in the abstract setting of Probability on metric spaces. Numerical, c...
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...
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 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...
Local differential privacy has been proposed as a strong measure of privacy under data collec-tion s...
Differential privacy is a framework to quantify to what extent individual privacy in a statistical d...
Differential privacy is a framework to quantify to what extent individual privacy in a statistical d...
We examine a generalised Randomised Response (RR) technique in the context of differential privacy a...
We examine a generalised Randomised Response (RR) technique in the context of differential privacy a...
We examine a generalised randomised response (RR) technique in the context of differential privacy a...
In this paper, we consider the setting in which the output of a differentially private mechanism is ...
International audienceWe study the privacy-utility trade-off in the context of metric differential p...
We study Differential Privacy in the abstract setting of Probability on metric spaces. Numerical, c...