面向社区结构保护的动态社会网络匿名技术研究

Lin Na, Xiaolin Zhang, Wang Yongping, Jian Li, Li-Xin Liu
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引用次数: 2

摘要

鉴于当前隐私保护方法存在的破坏社区结构、单工作站数据处理能力低等缺陷,动态社交网络中顶点度的动态变化将导致顶点身份的泄露。提出了动态社会网络度序列匿名(DSNDSA)保护社区结构的方法。该方法利用一种新的多维向量方法构造的压缩二叉树,得到分组和匿名结果。虚拟顶点被并行添加以构建匿名图。设计了基于社区的分布式虚拟顶点合并方法,以减少添加的顶点数量以满足匿名模型。扩展了一种用于社团检测的分割聚类算法。实验结果表明,本文提出的基于GraphX的算法在满足匿名性要求的同时,克服了传统算法在团体保护方面的缺陷。
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Research on Dynamic Social Network Anonymity Technology for Protecting Community Structure
The dynamic change of vertex degree in a dynamic social network will lead to vertex identity disclosure given the deficiencies in current privacy protection methods, such as the destruction of community structure and low data processing capability of a single workstation. The dynamic social network degree sequence anonymity (DSNDSA) method to protect community structure is proposed. The method obtains the grouping and anonymous results based on a compressed binary tree constructed by a new method called a multidimensional vector. Dummy vertices are added in parallel to construct anonymous graphs. Distributed to merge dummy vertices method based on the community is designed to reduce the number of vertices added to satisfy the anonymity model. A divide and the agglomerate algorithm is expanded for community detection. The experimental results show that the proposed algorithm based on GraphX can overcome the defects of the traditional algorithm in community protection while meeting the requirement of anonymity.
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