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Distributed privacy preserving technology in dynamic networks

机译:动态网络中的分布式隐私保存技术

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摘要

With the development of information technology, large-scale social network graph data have been produced and released to provide data analysis for scientific research and business structures, while traditional network privacy protection technology does not meet the actual requirements. In this paper, we address the privacy risks of link disclosure in sequential release of a dynamic network. To prevent privacy breaches, we proposed the privacy model k~(m) - number of mutual friend, where k indicates the privacy level and m is a time period that an adversary can monitor a victim to collect the attack knowledge. We present a distributed algorithm to generate releases by adding nodes in parallel. Further, in order to improve availability of anonymous graphs, distributed greedy merge noise node algorithm (DGMNNA) is designed to reduce the number of nodes added under the premise of satisfying the anonymous model. The experimental results show that the proposed algorithm can efficiently handle large-scale social network data while ensuring the availability of anonymous data.
机译:随着信息技术的发展,已经生产和发布了大规模的社交网络图数据,为科研和商业结构提供数据分析,而传统的网络隐私保护技术不符合实际要求。在本文中,我们解决了动态网络顺序发布中链接披露的隐私风险。为防止隐私违规,我们提出了隐私模型K〜(m) - 共同朋友的数量,其中k表示隐私水平,M是对手可以监控受害者收集攻击知识的时间段。我们提出了一种分布式算法来通过并行添加节点来生成释放。此外,为了提高匿名图的可用性,分布式贪婪合并噪声节点算法(DGMNNA)被设计为减少在满足匿名模型的前提下添加的节点的数量。实验结果表明,该算法可以有效地处理大规模的社交网络数据,同时确保匿名数据的可用性。

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