We study the canonical statistical task of computing the principal component from $n$ i.i.d.~data in $d$ dimensions under $(\varepsilon,\delta)$-differential privacy. Although extensively studied in literature, existing solutions fall short on two key aspects: ($i$) even for Gaussian data, existing private algorithms require the number of samples $n$ to scale super-linearly with $d$, i.e., $n=\Omega(d^{3/2})$, to obtain non-trivial results while non-private PCA requires only $n=O(d)$, and ($ii$) existing techniques suffer from a non-vanishing error even when the randomness in each data point is arbitrarily small. We propose DP-PCA, which is a single-pass algorithm that overcomes both limitations. It is based on a private minibatch gradient ...
In this paper, we present three new error bounds, in terms of the Frobenius norm, for covariance est...
Differential privacy (DP) ([6]) is a type of privacy guarantee that has become quite popular in the ...
This work studies formal utility and privacy guarantees for a simple multiplicative database transfo...
Principal components analysis (PCA) is a standard tool for identifying good low-dimensional approxim...
We present a federated, asynchronous, and $(\varepsilon, \delta)$-differentially private algorithm f...
We present a federated, asynchronous, and (ε, δ)-differentially private algorithm for PCA in the mem...
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
International audienceThe challenge of producing accurate statistics while respecting the privacy of...
Collecting user data is crucial for advancing machine learning, social science, and government polic...
This dissertation studies the trade-off between differential privacy and statistical accuracy in par...
We propose a new input perturbation mechanism for publishing a covariance matrix to achieve (epsilon...
Prior work on differential privacy analysis of randomized SGD algorithms relies on composition theor...
Since the introduction of differential privacy to the field of privacy preserving data analysis, man...
Differential privacy (DP) has become a rigorous central concept in privacy protection for the past d...
Differential privacy has seen remarkable success as a rigorous and practical formalization of data p...
In this paper, we present three new error bounds, in terms of the Frobenius norm, for covariance est...
Differential privacy (DP) ([6]) is a type of privacy guarantee that has become quite popular in the ...
This work studies formal utility and privacy guarantees for a simple multiplicative database transfo...
Principal components analysis (PCA) is a standard tool for identifying good low-dimensional approxim...
We present a federated, asynchronous, and $(\varepsilon, \delta)$-differentially private algorithm f...
We present a federated, asynchronous, and (ε, δ)-differentially private algorithm for PCA in the mem...
Differential privacy is the now de facto industry standard for ensuring privacy while publicly relea...
International audienceThe challenge of producing accurate statistics while respecting the privacy of...
Collecting user data is crucial for advancing machine learning, social science, and government polic...
This dissertation studies the trade-off between differential privacy and statistical accuracy in par...
We propose a new input perturbation mechanism for publishing a covariance matrix to achieve (epsilon...
Prior work on differential privacy analysis of randomized SGD algorithms relies on composition theor...
Since the introduction of differential privacy to the field of privacy preserving data analysis, man...
Differential privacy (DP) has become a rigorous central concept in privacy protection for the past d...
Differential privacy has seen remarkable success as a rigorous and practical formalization of data p...
In this paper, we present three new error bounds, in terms of the Frobenius norm, for covariance est...
Differential privacy (DP) ([6]) is a type of privacy guarantee that has become quite popular in the ...
This work studies formal utility and privacy guarantees for a simple multiplicative database transfo...