A novel approach to achieving £-anonymization for social network privacy preservation based on vertex connectivity

Jiang Huowen, Xiong Huan-liang, Zhang Huiyun
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Abstract

Social networks have been widely used, providing people with great convenience but also yielding potential risk of privacy disclosure. To prevent attacks based on background information or query that may expose users' privacy, we propose a method to achieve k-anonymization for network graphs. The concept of similarity matrix and that of the distance between a vertex and a cluster are defined based on vertex connectivity. On this basis, we present a clustering-based graph partitioning algorithm to obtain the K-anonymized graph of a certain network graph. Simulation experiments are conducted to analyze and verify the effectiveness of our algorithm.
一种基于顶点连通性的社交网络隐私保护匿名化新方法
社交网络被广泛使用,为人们提供了极大的便利,但也带来了潜在的隐私泄露风险。为了防止基于背景信息的攻击或可能暴露用户隐私的查询,我们提出了一种实现网络图k-匿名化的方法。基于顶点连通性定义了相似矩阵和顶点与聚类之间距离的概念。在此基础上,我们提出了一种基于聚类的图划分算法来获得某网络图的k匿名图。通过仿真实验分析和验证了算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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