We study the problem of counting the number of distinct elements in a dataset subject to the constraint of differential privacy. We consider the challenging setting of person-level DP (a.k.a. user-level DP) where each person may contribute an unbounded number of items and hence the sensitivity is unbounded. Our approach is to compute a bounded-sensitivity version of this query, which reduces to solving a max-flow problem. The sensitivity bound is optimized to balance the noise we must add to privatize the answer against the error of the approximation of the bounded-sensitivity query to the true number of unique elements
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for di...
We introduce the notion of restricted sensitivity as an alternative to global and smooth sensitivity...
Vast amounts of sensitive personal information are collected by companies, institutions and governme...
Differential privacy (DP) has gained significant attention lately as the state of the art in privacy...
We study the setup where each of n users holds an element from a discrete set, and the goal is to co...
N.B. This is the full version of the conference paper pub-lished as [12]. This version includes an A...
In the context of statistical databases, the release of accurate statistical information about the c...
We study the optimal sample complexity of a given workload of linear queries under the constraints o...
Differential privacy has gained attention from the community as the mechanism for privacy protection...
A central problem in differentially private data analysis is how to design efficient algorithms capa...
International audienceLocal differential privacy (LDP) is a variant of differential privacy (DP) whe...
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
Computing technologies today have made it much easier to gather personal data, ranging from GPS loca...
We study the problem of performing counting queries at different levels in hierarchical structures w...
N.B. This is the full version of the conference paper pub-lished as [12]. This version includes an A...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for di...
We introduce the notion of restricted sensitivity as an alternative to global and smooth sensitivity...
Vast amounts of sensitive personal information are collected by companies, institutions and governme...
Differential privacy (DP) has gained significant attention lately as the state of the art in privacy...
We study the setup where each of n users holds an element from a discrete set, and the goal is to co...
N.B. This is the full version of the conference paper pub-lished as [12]. This version includes an A...
In the context of statistical databases, the release of accurate statistical information about the c...
We study the optimal sample complexity of a given workload of linear queries under the constraints o...
Differential privacy has gained attention from the community as the mechanism for privacy protection...
A central problem in differentially private data analysis is how to design efficient algorithms capa...
International audienceLocal differential privacy (LDP) is a variant of differential privacy (DP) whe...
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
Computing technologies today have made it much easier to gather personal data, ranging from GPS loca...
We study the problem of performing counting queries at different levels in hierarchical structures w...
N.B. This is the full version of the conference paper pub-lished as [12]. This version includes an A...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for di...
We introduce the notion of restricted sensitivity as an alternative to global and smooth sensitivity...
Vast amounts of sensitive personal information are collected by companies, institutions and governme...