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Deeply Understanding Structure-based Social Network De-anonymization

机译:深入了解基于结构的社交网络去匿名化

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Anonymization techniques are widely adopted to protect users’ privacy during social data publishing and sharing. In this paper, we conduct a comprehensive analysis on the typical structure-based social network de-anonymization algorithms. We aim to understand the de-anonymization approaches and disclose the impacts on their application performance caused by different factors. We design the analysis framework and define three experiment environments to evaluate a few factors’ impacts on the target algorithms. Based on our analysis architecture, we simulate two typical de-anonymization algorithms and evaluate their performance under different pre-configured environments.
机译:匿名技术被广泛采用以在社交数据发布和共享过程中保护用户的隐私。在本文中,我们对典型的基于结构的社交网络去匿名算法进行了全面分析。我们旨在了解反匿名方法,并披露由不同因素引起的对其应用性能的影响。我们设计分析框架并定义三个实验环境,以评估一些因素对目标算法的影响。基于我们的分析体系结构,我们模拟两种典型的去匿名算法,并评估它们在不同的预配置环境下的性能。

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