差分私有k均值聚类

D. Su, Jianneng Cao, Ninghui Li, E. Bertino, Hongxia Jin
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引用次数: 129

摘要

对于不同的私有数据分析,有两种广泛的方法。交互式方法旨在为各种数据挖掘任务开发定制的不同私有算法。非交互式方法旨在开发不同的私有算法,该算法可以输出输入数据集的摘要,然后可用于支持各种数据挖掘任务。在本文中,我们研究了这两种方法在差分私有k均值聚类上的有效性。我们开发技术来分析现有的交互式和非交互式方法的经验误差行为。在此基础上,我们提出了一种改进的DPLloyd算法,它是Lloyd算法的差分私有版本。我们还提出了一种非交互式方法EUGkM,它发布了k-means聚类的差异私有摘要。广泛而系统的实验结果支持了我们的分析,并证明了我们对DPLloyd和所提出的EUGkM算法的改进的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differentially Private K-Means Clustering
There are two broad approaches for differentially private data analysis. The interactive approach aims at developing customized differentially private algorithms for various data mining tasks. The non-interactive approach aims at developing differentially private algorithms that can output a synopsis of the input dataset, which can then be used to support various data mining tasks. In this paper we study the effectiveness of the two approaches on differentially private k-means clustering. We develop techniques to analyze the empirical error behaviors of the existing interactive and non-interactive approaches. Based on the analysis, we propose an improvement of DPLloyd which is a differentially private version of the Lloyd algorithm. We also propose a non-interactive approach EUGkM which publishes a differentially private synopsis for k-means clustering. Results from extensive and systematic experiments support our analysis and demonstrate the effectiveness of our improvement on DPLloyd and the proposed EUGkM algorithm.
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