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Filters: Author is Cao, Jianneng  [Clear All Filters]
2017-07-24
Su, Dong, Cao, Jianneng, Li, Ninghui, Bertino, Elisa, Jin, Hongxia.  2016.  Differentially Private K-Means Clustering. Proceedings of the Sixth ACM Conference on Data and Application Security and Privacy. :26–37.

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.