Most differential privacy mechanisms are applied (i.e., composed) numerous times on sensitive data. We study the design of optimal differential privacy mechanisms in the limit of a large number of compositions. As a consequence of the law of large numbers, in this regime the best privacy mechanism is the one that minimizes the Kullback-Leibler divergence between the conditional output distributions of the mechanism given two different inputs. We formulate an optimization problem to minimize this divergence subject to a cost constraint on the noise. We first prove that additive mechanisms are optimal. Since the optimization problem is infinite dimensional, it cannot be solved directly; nevertheless, we quantize the problem to derive near-opt...
We consider a platform's problem of collecting data from privacy sensitive users to estimate an unde...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...
In this paper, we consider the setting in which the output of a differentially private mechanism is ...
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 derive the optimal -differentially private mechanism for a general two-dimensional real-valued (h...
Local differential privacy has been proposed as a strong measure of privacy under data collec-tion s...
Firms and statistical agencies must protect the privacy of the individuals whose data they collect, ...
Local differential privacy has recently surfaced as a strong measure of privacy in contexts where pe...
Differential privacy is a framework to quantify to what extent individual privacy in a statistical d...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for di...
Abstract. In the study of differential privacy, composition theorems (starting with the orig-inal pa...
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 consider a platform's problem of collecting data from privacy sensitive users to estimate an unde...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...
In this paper, we consider the setting in which the output of a differentially private mechanism is ...
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 derive the optimal -differentially private mechanism for a general two-dimensional real-valued (h...
Local differential privacy has been proposed as a strong measure of privacy under data collec-tion s...
Firms and statistical agencies must protect the privacy of the individuals whose data they collect, ...
Local differential privacy has recently surfaced as a strong measure of privacy in contexts where pe...
Differential privacy is a framework to quantify to what extent individual privacy in a statistical d...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for di...
Abstract. In the study of differential privacy, composition theorems (starting with the orig-inal pa...
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 consider a platform's problem of collecting data from privacy sensitive users to estimate an unde...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for dif...
In this paper, we consider the setting in which the output of a differentially private mechanism is ...