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A Privacy-Preserving k-Means Clustering Algorithm Using Secure Comparison Protocol and Density-Based Center Point Selection

机译:使用安全比较协议和基于密度的中心点选择的保护隐私的k均值聚类算法

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Since studies on privacy-preserving database outsourcing have been spotlighted in a cloud computing, databases need to be encrypted before being outsourced to the cloud. Rao et al. proposed a k-Means clustering algorithm that supports the protection of sensitive data by using a paillier cryptosystem[1]. However, the existing algorithm is inefficient due to bit-array based comparison. To solve this problem, we propose an efficient privacy-preserving k-Means clustering algorithm. First, we provide a new secure comparison protocol that performs the fast comparison of encrypted data. Second, we select center points by considering the distribution of the entire data. Finally, we show from our performance analysis that our clustering algorithm achieves about 300% better performance on average than the existing algorithm.
机译:由于有关保护隐私的数据库外包的研究已在云计算中得到关注,因此在将数据库外包给云之前,需要对其进行加密。 Rao等。提出了一种k-Means聚类算法,该算法通过使用paillier密码系统来支持敏感数据的保护[1]。然而,由于基于位阵列的比较,现有算法效率低下。为了解决这个问题,我们提出了一种高效的隐私保护k-Means聚类算法。首先,我们提供了一种新的安全比较协议,可以对加密数据进行快速比较。其次,我们通过考虑整个数据的分布来选择中心点。最后,从我们的性能分析中可以看出,与现有算法相比,我们的聚类算法平均可实现约300%的性能提升。

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