In this article, we present a privacy-preserving technique for user-centric multi-release graphs. Our technique consists of sequentially releasing anonymized versions of these graphs under Blowfish Privacy. To do so, we introduce a graph model that is augmented with a time dimension and sampled at discrete time steps. We show that the direct application of state-of-the-art privacy-preserving Differential Private techniques is weak against background knowledge attacker models. We present different scenarios where randomizing separate releases independently is vulnerable to correlation attacks. Our method is inspired by Differential Privacy (DP) and its extension Blowfish Privacy (BP). To validate it, we show its effectiveness as well as its ...
Releasing evolving networks which contain sensitive information could compromise individual privacy....
Abstract—A large amount of transaction data containing associations between individuals and sensitiv...
Many datasets can be represented by graphs, where nodes correspond to individuals and edges capture ...
Abstract In this article, we present a privacy-preserving technique for user-centric multi-release ...
Releasing sensitive data while preserving privacy is an important problem that has attracted conside...
International audienceThe problem of private publication of graph data has attracted a lot of attent...
Nowadays, more and more people join social networks, such as Facebook, Linkedin, and Livespace, to s...
Privacy definitions provide ways for trading-off the privacy of individuals in a statistical databas...
Sequential data is being increasingly used in a variety of applications. Publishing sequential data ...
© 2017 Elsevier B.V. Privacy preserving data release is a hot topic that attracts a lot of attention...
Abstract: We propose methods to release and analyze synthetic graphs in order to protect privacy of ...
The application of graph analytics to various domains has yielded tremendous societal and economical...
An individual's personal information is gathered by a multitude of different data collectors through...
Abstract. Enabling accurate analysis of social network data while preserving differential privacy ha...
The use of private data is pivotal for numerous services including location--based ones, collaborati...
Releasing evolving networks which contain sensitive information could compromise individual privacy....
Abstract—A large amount of transaction data containing associations between individuals and sensitiv...
Many datasets can be represented by graphs, where nodes correspond to individuals and edges capture ...
Abstract In this article, we present a privacy-preserving technique for user-centric multi-release ...
Releasing sensitive data while preserving privacy is an important problem that has attracted conside...
International audienceThe problem of private publication of graph data has attracted a lot of attent...
Nowadays, more and more people join social networks, such as Facebook, Linkedin, and Livespace, to s...
Privacy definitions provide ways for trading-off the privacy of individuals in a statistical databas...
Sequential data is being increasingly used in a variety of applications. Publishing sequential data ...
© 2017 Elsevier B.V. Privacy preserving data release is a hot topic that attracts a lot of attention...
Abstract: We propose methods to release and analyze synthetic graphs in order to protect privacy of ...
The application of graph analytics to various domains has yielded tremendous societal and economical...
An individual's personal information is gathered by a multitude of different data collectors through...
Abstract. Enabling accurate analysis of social network data while preserving differential privacy ha...
The use of private data is pivotal for numerous services including location--based ones, collaborati...
Releasing evolving networks which contain sensitive information could compromise individual privacy....
Abstract—A large amount of transaction data containing associations between individuals and sensitiv...
Many datasets can be represented by graphs, where nodes correspond to individuals and edges capture ...