In this paper, we study a stochastic disclosure control problem using information-theoretic methods. The useful data to be disclosed depend on private data that should be protected. Thus, we design a privacy mechanism to produce new data which maximizes the disclosed information about the useful data under a strong chi(2)-privacy criterion. For sufficiently small leakage, the privacy mechanism design problem can be geometrically studied in the space of probability distributions by a local approximation of the mutual information. By using methods from Euclidean information geometry, the original highly challenging optimization problem can be reduced to a problem of finding the principal right-singular vector of a matrix, which characterizes ...
Firms and statistical agencies must protect the privacy of the individuals whose data they collect, ...
We consider data release protocols for data $X=(S,U)$, where $S$ is sensitive; the released data $Y$...
© 1963-2012 IEEE. We study the central problem in data privacy: how to share data with an analyst wh...
In this paper, we study a stochastic disclosure control problem using information-theoretic methods....
We study an information-theoretic privacy problem, where an agent observes useful data Y and wants t...
Abstract—We propose a general statistical inference framework to capture the privacy threat incurred...
We consider the problem of privacy-preserving data release for a specific utility task under perfect...
We consider the problem of privacy preservation in disclosure of data sets, and use maximal informat...
A deterministic privacy metric using non-stochastic information theory is developed. Particularly, m...
Local differential privacy has recently surfaced as a strong measure of privacy in contexts where pe...
Local differential privacy has been proposed as a strong measure of privacy under data collec-tion s...
We investigate the problem of intentionally disclosing information about a set of measurement points...
For a pair of (dependent) random variables (X, Y), the following problem is addressed: What is the m...
We consider the problem of privacy-preserving data release for a specific utility task under perfect...
A privacy-constrained information extraction problem is considered where for a pair of correlated di...
Firms and statistical agencies must protect the privacy of the individuals whose data they collect, ...
We consider data release protocols for data $X=(S,U)$, where $S$ is sensitive; the released data $Y$...
© 1963-2012 IEEE. We study the central problem in data privacy: how to share data with an analyst wh...
In this paper, we study a stochastic disclosure control problem using information-theoretic methods....
We study an information-theoretic privacy problem, where an agent observes useful data Y and wants t...
Abstract—We propose a general statistical inference framework to capture the privacy threat incurred...
We consider the problem of privacy-preserving data release for a specific utility task under perfect...
We consider the problem of privacy preservation in disclosure of data sets, and use maximal informat...
A deterministic privacy metric using non-stochastic information theory is developed. Particularly, m...
Local differential privacy has recently surfaced as a strong measure of privacy in contexts where pe...
Local differential privacy has been proposed as a strong measure of privacy under data collec-tion s...
We investigate the problem of intentionally disclosing information about a set of measurement points...
For a pair of (dependent) random variables (X, Y), the following problem is addressed: What is the m...
We consider the problem of privacy-preserving data release for a specific utility task under perfect...
A privacy-constrained information extraction problem is considered where for a pair of correlated di...
Firms and statistical agencies must protect the privacy of the individuals whose data they collect, ...
We consider data release protocols for data $X=(S,U)$, where $S$ is sensitive; the released data $Y$...
© 1963-2012 IEEE. We study the central problem in data privacy: how to share data with an analyst wh...