Today, continuous publishing of differentially private query results is the de-facto standard. The challenge hereby is adding enough noise to satisfy a given privacy level, and adding as little noise as necessary to keep high data utility. In this context, we observe that privacy goals of individuals vary significantly over time. For instance, one might aim to hide whether one is on vacation only during school holidays. This observation, named time-dependent relevance, implies two effects which – properly exploited – allow to tune data utility. The effects are time-variant sensitivity (TEAS) and time-variant number of affected query results (TINAR). As today’s DP frameworks, by design, cannot exploit these effects, we propose Swellfish priv...
Differential privacy, introduced by Dwork et al. in 2006, has become the benchmark for data privacy ...
We study the accuracy of differentially private mechanisms in the continual release model. A continu...
International audienceDifferential privacy offers a way to answer queries about sensitive informatio...
Differential Privacy (DP) has received increasing attention as a rigorous privacy framework. Many ex...
© 2017 Elsevier B.V. Privacy preserving data release is a hot topic that attracts a lot of attention...
Data often contains sensitive information, which poses a major obstacle to publishing it. Some sugge...
We study the problem of publishing a stream of real-valued data satisfying differential privacy (DP)...
Privacy-preserving statistical databases are designed to provide information about a population whil...
The -event framework is the current standard for ensuring differential privacy on continuously monit...
Guaranteeing privacy in released data is an important goal for data-producing agencies. There has be...
Differential privacy [DMNS06] is a strong definition of database privacy that provides indi- viduals...
Privacy definitions provide ways for trading-off the privacy of individuals in a statistical databas...
Numerous applications require continuous publication of statistics for monitoring purposes, such as ...
Many large databases of personal information currently exist in the hands of corporations, nonprofit...
We introduce and study a relaxation of differential privacy [Dwork et al., 2006] that accounts for m...
Differential privacy, introduced by Dwork et al. in 2006, has become the benchmark for data privacy ...
We study the accuracy of differentially private mechanisms in the continual release model. A continu...
International audienceDifferential privacy offers a way to answer queries about sensitive informatio...
Differential Privacy (DP) has received increasing attention as a rigorous privacy framework. Many ex...
© 2017 Elsevier B.V. Privacy preserving data release is a hot topic that attracts a lot of attention...
Data often contains sensitive information, which poses a major obstacle to publishing it. Some sugge...
We study the problem of publishing a stream of real-valued data satisfying differential privacy (DP)...
Privacy-preserving statistical databases are designed to provide information about a population whil...
The -event framework is the current standard for ensuring differential privacy on continuously monit...
Guaranteeing privacy in released data is an important goal for data-producing agencies. There has be...
Differential privacy [DMNS06] is a strong definition of database privacy that provides indi- viduals...
Privacy definitions provide ways for trading-off the privacy of individuals in a statistical databas...
Numerous applications require continuous publication of statistics for monitoring purposes, such as ...
Many large databases of personal information currently exist in the hands of corporations, nonprofit...
We introduce and study a relaxation of differential privacy [Dwork et al., 2006] that accounts for m...
Differential privacy, introduced by Dwork et al. in 2006, has become the benchmark for data privacy ...
We study the accuracy of differentially private mechanisms in the continual release model. A continu...
International audienceDifferential privacy offers a way to answer queries about sensitive informatio...