Enabling Dynamic Analysis of Anonymized Social Network Data

Xuan Ding, Wei Wang
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Abstract

Anonymization is a widely used technique for the private publication of social network data. However, since the existing social network anonymization methods consider only one-time releases, they only reserve the static utility of the anonymized data. As social network evolves, these methods have posed severe challenges to the emerging requirement of dynamic social network analysis, which requires the dynamic utility of an evolving social network to be reserved for analysis. Instead of proposing a new anonymization method to handle dynamics, in this paper, we address these challenges by rebuilding connections between the sequentially published, anonymized data. By doing so, we have enabled a broad range of dynamic analysis to be applied to those already anonymized data without re-generating them. This suggests that our method is transparent to both the existing anonymization methods and the anonymized data. We adopt a combination of data-mining and graph-matching techniques to accomplish this task. The effectiveness of our method has been demonstrated on a series of real, dynamic social network data.
启用匿名社交网络数据的动态分析
匿名化是一种广泛使用的技术,用于社交网络数据的私人发布。然而,由于现有的社交网络匿名化方法只考虑一次性发布,它们只保留匿名数据的静态效用。随着社会网络的发展,这些方法对动态社会网络分析的新需求提出了严峻的挑战,这就要求在分析中保留不断发展的社会网络的动态效用。在本文中,我们没有提出一种新的匿名化方法来处理动态,而是通过重建顺序发布的匿名数据之间的连接来解决这些挑战。通过这样做,我们可以将广泛的动态分析应用于那些已经匿名的数据,而无需重新生成它们。这表明我们的方法对现有的匿名化方法和匿名化数据都是透明的。我们采用数据挖掘和图匹配技术的结合来完成这项任务。该方法的有效性已经在一系列真实的、动态的社会网络数据上得到了验证。
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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