Differentially Private Correlation Clustering

02/17/2021
by   Mark Bun, et al.
0

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 Ω(n).

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/28/2020

A note on differentially private clustering with large additive error

In this note, we describe a simple approach to obtain a differentially p...
research
01/31/2023

Differentially-Private Hierarchical Clustering with Provable Approximation Guarantees

Hierarchical Clustering is a popular unsupervised machine learning metho...
research
02/22/2022

Better Private Algorithms for Correlation Clustering

In machine learning, correlation clustering is an important problem whos...
research
05/02/2019

Scalable and Jointly Differentially Private Packing

We introduce an (ϵ, δ)-jointly differentially private algorithm for pack...
research
08/18/2020

Differentially Private Clustering: Tight Approximation Ratios

We study the task of differentially private clustering. For several basi...
research
04/27/2023

Improving the Utility of Differentially Private Clustering through Dynamical Processing

This study aims to alleviate the trade-off between utility and privacy i...
research
05/02/2023

Unbounded Differentially Private Quantile and Maximum Estimation

In this work we consider the problem of differentially private computati...

Please sign up or login with your details

Forgot password? Click here to reset