Privacy-Preserving Affinity Propagation Clustering over Vertically Partitioned Data

Xiao-yan Zhu, Mo-meng Liu, Min Xie
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引用次数: 6

Abstract

Data mining has been well-studied in academia and widely applied to many fields. As a significant mining means, clustering algorithm has been successfully used in facility location, image categorization and bioinformatics. K-means and affinity propagation (AP) are two effective clustering algorithms, in which the former has involved in privacy preserving data mining, but the latter does not. Considering the unparalleled advantages of AP over k-means, we firstly propose a secure scheme for AP clustering in this paper. Our scheme runs over a partitioned database that different parties contain different attributes for a common set of entities. This scheme guarantees no disclosure of parties' private information by means of the cryptographic tools which have been successfully applied in privacy preserving k-means clustering. The final result for each party is the assignment of each entity, but gives nothing about the attributes held by other parties. In the end, we make a brief security discussion under the semi-honest model and analyze the communication cost to show that our scheme does have good performance.
垂直分区数据上保持隐私的亲和传播聚类
数据挖掘在学术界得到了很好的研究,并广泛应用于许多领域。聚类算法作为一种重要的挖掘手段,已成功地应用于设施定位、图像分类和生物信息学等领域。K-means和亲和传播(affinity propagation, AP)是两种有效的聚类算法,其中K-means涉及保护隐私的数据挖掘,而AP不涉及。考虑到AP相对于k-means的无可比拟的优势,本文首先提出了一种安全的AP聚类方案。我们的方案在一个分区数据库上运行,其中不同的各方包含一组公共实体的不同属性。该方案利用已成功应用于保护隐私的k-means聚类的加密工具,保证了各方隐私信息的不泄露。各方的最终结果是每个实体的分配,但没有给出其他各方持有的属性。最后,对半诚实模型下的安全性进行了简要的讨论,并对其通信成本进行了分析,证明了该方案具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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