Improving the utility of differentially private clustering through dynamical processing
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초록

This study aims to alleviate the trade-off between utility and privacy of differentially private clustering. Existing works focus on simple methods, which show poor performance for non-convex clusters. To fit complex cluster distributions, we propose sophisticated dynamical processing inspired by Morse theory, with which we hierarchically connect the Gaussian sub-clusters obtained through existing methods. Our theoretical results imply that the proposed dynamical processing introduces little to no additional privacy loss. Experiments show that our framework can improve the clustering performance of existing methods at the same privacy level. © 2024 Elsevier Ltd

키워드

ClusteringDifferential privacyDynamical processingMorse theory
제목
Improving the utility of differentially private clustering through dynamical processing
저자
Byun, JunyoungChoi, YujinLee, Jaewook
DOI
10.1016/j.patcog.2024.110890
발행일
2025-01
유형
Article
저널명
Pattern Recognition
157