In this paper, we present three new error bounds, in terms of the Frobenius norm, for covariance estimation under differential privacy: (1) a worst-case bound of $\tilde{O}(d^{1/4}/\sqrt{n})$, which improves the standard Gaussian mechanism $\tilde{O}(d/n)$ for the regime $d>\widetilde{\Omega}(n^{2/3})$; (2) a trace-sensitive bound that improves the state of the art by a $\sqrt{d}$-factor, and (3) a tail-sensitive bound that gives a more instance-specific result. The corresponding algorithms are also simple and efficient. Experimental results show that they offer significant improvements over prior work
International audienceThe challenge of producing accurate statistics while respecting the privacy of...
A common goal of privacy research is to release synthetic data that satisfies a formal privacy guara...
Since the introduction of differential privacy to the field of privacy preserving data analysis, man...
Differential privacy has seen remarkable success as a rigorous and practical formalization of data p...
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
Adding random noise to database query results is an important tool for achieving privacy. A challeng...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This dissertation studies the trade-off between differential privacy and statistical accuracy in par...
Differential privacy has seen remarkable success as a rigorous and practical for- malization of data...
Differential privacy (DP) has become a rigorous central concept in privacy protection for the past d...
In this paper we deal with the problem of improving the recent milestone results on the estimation o...
The framework of differential privacy protects an individual's privacy while publishing query respon...
Differential privacy (DP) is the de facto standard for private data release and private machine lear...
Differential privacy is becoming a gold standard notion of privacy, it offers a guaranteed bound on ...
We study the canonical statistical task of computing the principal component from $n$ i.i.d.~data in...
International audienceThe challenge of producing accurate statistics while respecting the privacy of...
A common goal of privacy research is to release synthetic data that satisfies a formal privacy guara...
Since the introduction of differential privacy to the field of privacy preserving data analysis, man...
Differential privacy has seen remarkable success as a rigorous and practical formalization of data p...
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
Adding random noise to database query results is an important tool for achieving privacy. A challeng...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This dissertation studies the trade-off between differential privacy and statistical accuracy in par...
Differential privacy has seen remarkable success as a rigorous and practical for- malization of data...
Differential privacy (DP) has become a rigorous central concept in privacy protection for the past d...
In this paper we deal with the problem of improving the recent milestone results on the estimation o...
The framework of differential privacy protects an individual's privacy while publishing query respon...
Differential privacy (DP) is the de facto standard for private data release and private machine lear...
Differential privacy is becoming a gold standard notion of privacy, it offers a guaranteed bound on ...
We study the canonical statistical task of computing the principal component from $n$ i.i.d.~data in...
International audienceThe challenge of producing accurate statistics while respecting the privacy of...
A common goal of privacy research is to release synthetic data that satisfies a formal privacy guara...
Since the introduction of differential privacy to the field of privacy preserving data analysis, man...