We present new theoretical results on differentially private data release useful with respect to any target class of counting queries, coupled with experimental results on a variety of real world data sets. Specifically, we study a simple combination of the multiplicative weights approach of [Hardt and Rothblum, 2010] with the exponential mechanism of [McSherry and Talwar, 2007]. The multiplicative weights framework allows us to maintain and improve a distribution approximating a given data set with respect to a set of counting queries. We use the exponential mechanism to select those queries most incorrectly tracked by the current distribution. Combing the two, we quickly approach a distribution that agrees with the data set on the given...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for di...
We study the problem of performing counting queries at different levels in hierarchical structures w...
We consider the problem of the private release of statistics (like aggregate payrolls) where it is c...
We present new theoretical results on differentially private data release useful with respect to any...
We show new lower bounds on the sample complexity of (ε, δ)-differentially private algorithms that a...
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
Abstract. Publication of the private set-valued data will provide enormous op-portunities for counti...
In this thesis, we study when algorithmic tasks can be performed on sensitive data while protecting ...
The problem of privately releasing data is to provide a version of a dataset without revealing sensi...
We present three new algorithms for constructing differentially private synthetic data—a sanitized v...
In this dissertation, I am going to introduce my work on differentially privatedata mining. There ar...
Many large databases of personal information currently exist in the hands of corporations, nonprofit...
Releasing sensitive data while preserving privacy is an important problem that has attracted conside...
peer reviewedAnalyses that fulfill differential privacy provide plausible deniability to individuals...
We prove new upper and lower bounds on the sample complexity of (ε, δ) differentially private algori...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for di...
We study the problem of performing counting queries at different levels in hierarchical structures w...
We consider the problem of the private release of statistics (like aggregate payrolls) where it is c...
We present new theoretical results on differentially private data release useful with respect to any...
We show new lower bounds on the sample complexity of (ε, δ)-differentially private algorithms that a...
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
Abstract. Publication of the private set-valued data will provide enormous op-portunities for counti...
In this thesis, we study when algorithmic tasks can be performed on sensitive data while protecting ...
The problem of privately releasing data is to provide a version of a dataset without revealing sensi...
We present three new algorithms for constructing differentially private synthetic data—a sanitized v...
In this dissertation, I am going to introduce my work on differentially privatedata mining. There ar...
Many large databases of personal information currently exist in the hands of corporations, nonprofit...
Releasing sensitive data while preserving privacy is an important problem that has attracted conside...
peer reviewedAnalyses that fulfill differential privacy provide plausible deniability to individuals...
We prove new upper and lower bounds on the sample complexity of (ε, δ) differentially private algori...
We study mechanisms for differential privacy on finite datasets. By deriving sufficient sets for di...
We study the problem of performing counting queries at different levels in hierarchical structures w...
We consider the problem of the private release of statistics (like aggregate payrolls) where it is c...