Correlation clustering is a widely used technique in unsupervised machine learning. Motivated by applications where individual privacy is a concern, we initiate the study of differentially private correlation clustering. We propose an algorithm that achieves subquadratic additive error compared to the optimal cost. In contrast, straightforward adaptations of existing non-private algorithms all lead to a trivial quadratic error. Finally, we give a lower bound showing that any pure differentially private algorithm for correlation clustering requires additive error of $\Omega(n)$
Machine learning models can leak information about the data used to train them. To mitigate this iss...
In this paper, we present the first differentially private clustering method for arbitrary-shaped no...
This paper, based on differential privacy protecting K-means clustering algorithm, realizes privacy ...
Correlation clustering is a widely used technique in unsupervised machine learning. Motivated by app...
Subspace clustering is an unsupervised learning problem that aims at grouping data points into multi...
Many applications of machine learning, such as human health research, involve processing private or ...
This paper studies the problem of clustering in metric spaces while preserving the privacy of indivi...
We present a new algorithm for locating a small cluster of points with differential privacy [Dwork, ...
Correlation clustering is a ubiquitous paradigm in unsupervised machine learning where addressing un...
Find k low-dimensional linear subspaces to ap-proximate a set of unlabeled data points. • k-means ob...
Collecting user data is crucial for advancing machine learning, social science, and government polic...
We introduce a new (ϵₚ, δₚ)-differentially private algorithm for the k-means clustering problem. Giv...
Aiming to provide more information about the behaviors between groups or patterns between clusters i...
This paper proposes an effficient solution with high accuracy to the problem of privacy-preserving c...
Abstract Enabling accurate analysis of social network data while preserving differential privacy has...
Machine learning models can leak information about the data used to train them. To mitigate this iss...
In this paper, we present the first differentially private clustering method for arbitrary-shaped no...
This paper, based on differential privacy protecting K-means clustering algorithm, realizes privacy ...
Correlation clustering is a widely used technique in unsupervised machine learning. Motivated by app...
Subspace clustering is an unsupervised learning problem that aims at grouping data points into multi...
Many applications of machine learning, such as human health research, involve processing private or ...
This paper studies the problem of clustering in metric spaces while preserving the privacy of indivi...
We present a new algorithm for locating a small cluster of points with differential privacy [Dwork, ...
Correlation clustering is a ubiquitous paradigm in unsupervised machine learning where addressing un...
Find k low-dimensional linear subspaces to ap-proximate a set of unlabeled data points. • k-means ob...
Collecting user data is crucial for advancing machine learning, social science, and government polic...
We introduce a new (ϵₚ, δₚ)-differentially private algorithm for the k-means clustering problem. Giv...
Aiming to provide more information about the behaviors between groups or patterns between clusters i...
This paper proposes an effficient solution with high accuracy to the problem of privacy-preserving c...
Abstract Enabling accurate analysis of social network data while preserving differential privacy has...
Machine learning models can leak information about the data used to train them. To mitigate this iss...
In this paper, we present the first differentially private clustering method for arbitrary-shaped no...
This paper, based on differential privacy protecting K-means clustering algorithm, realizes privacy ...