资源论文Differentially Private Clustering in High-Dimensional Euclidean Spaces

Differentially Private Clustering in High-Dimensional Euclidean Spaces

2020-03-09 | |  57 |   30 |   0

Abstract

We study the problem of clustering sensitive data while preserving the privacy of individuals represented in the dataset, which has broad applications in practical machine learning and data analysis tasks. Although the problem has been widely studied in the context of lowdimensional, discrete spaces, much remains unknown concerning private clustering in highdimensional Euclidean spaces 图片.png In th work, we give differentially private and efficient algorithms achieving strong guarantees for k-means and k-median clustering when d = Ω(polylog(n)). Our algorithm achieves clustering loss at most 图片.png + poly(log n, d, advancing the state-of-the-art result of 图片.png + 图片.png We also study the case whe the data points are s-sparse and show that the clustering loss can scale logarithmically with d, i.e., 图片.pngOPT + poly(log n, log d, k, s). Experiments on both synthetic and real datasets verify the effectiveness of the proposed method.

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