A differential privacy protecting K-means clustering algorithm based on contour coefficients

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Abstract

This paper, based on differential privacy protecting K-means clustering algorithm, realizes privacy protection by adding data-disturbing Laplace noise to cluster center point. In order to solve the problem of Laplace noise randomness which causes the center point to deviate, especially when poor availability of clustering results appears because of small privacy budget parameters, an improved differential privacy protecting K-means clustering algorithm was raised in this paper. The improved algorithm uses the contour coefficients to quantitatively evaluate the clustering effect of each iteration and add different noise to different clusters. In order to be adapted to the huge number of data, this paper provides an algorithm design in MapReduce Framework. Experimental finding shows that the new algorithm improves the availability of the algorithm clustering results under the condition of ensuring individual privacy without significantly increasing its operating time.

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APA

Zhang, Y., Liu, N., & Wang, S. (2018). A differential privacy protecting K-means clustering algorithm based on contour coefficients. PLoS ONE, 13(11). https://doi.org/10.1371/journal.pone.0206832

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