We address one-time publishing of non-overlapping counts with o-differential privacy. These statistics are useful in a wide and important range of applications, including transactional, traffic and medical data analysis. Prior work on the topic publishes such statistics with prohibitively low utility in several practical scenarios. Towards this end, we present GS, a method that pre-processes the counts by elaborately grouping and smoothing them via averaging. This step acts as a form of preliminary perturbation that diminishes sensitivity, and enables GS to achieve o-differential privacy through low Laplace noise injection. The grouping strategy is dictated by a sampling mechanism, which minimizes the smoothing perturbation. We demonstrate ...
The framework of differential privacy protects an individual's privacy while publishing query respon...
Differential privacy has emerged as a de facto standard of privacy notion. It is widely adopted in v...
We present an approach to differentially private computa-tion in which one does not scale up the mag...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
The differential privacy is the state-of-the-art conception for privacy preservation due to its stro...
Differential privacy is a popular privacy model within the research community because of the strong ...
Data set releases are the most convenient way to make data available for secondary use: in principle...
AbstractOne of the challenges of implementing differential data privacy, is that the utility (useful...
We develop a simple method to reduce privacy loss when disclosing statistics such as OLS regression ...
Enterprises and governments around the world have been attempting to leverage intelligence from the ...
We propose new differential privacy solutions for when external invariants and integer constraints a...
Data analysis is expected to provide accurate descriptions of the data. However, this is in oppositi...
An individual's personal information is gathered by a multitude of different data collectors through...
In order to remain competitive, Internet companies collect and analyse user data for the purpose of ...
The framework of differential privacy protects an individual's privacy while publishing query respon...
Differential privacy has emerged as a de facto standard of privacy notion. It is widely adopted in v...
We present an approach to differentially private computa-tion in which one does not scale up the mag...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
The differential privacy is the state-of-the-art conception for privacy preservation due to its stro...
Differential privacy is a popular privacy model within the research community because of the strong ...
Data set releases are the most convenient way to make data available for secondary use: in principle...
AbstractOne of the challenges of implementing differential data privacy, is that the utility (useful...
We develop a simple method to reduce privacy loss when disclosing statistics such as OLS regression ...
Enterprises and governments around the world have been attempting to leverage intelligence from the ...
We propose new differential privacy solutions for when external invariants and integer constraints a...
Data analysis is expected to provide accurate descriptions of the data. However, this is in oppositi...
An individual's personal information is gathered by a multitude of different data collectors through...
In order to remain competitive, Internet companies collect and analyse user data for the purpose of ...
The framework of differential privacy protects an individual's privacy while publishing query respon...
Differential privacy has emerged as a de facto standard of privacy notion. It is widely adopted in v...
We present an approach to differentially private computa-tion in which one does not scale up the mag...