Measuring Topological Anonymity in Social Networks

Lisa Singh, J. Zhan
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引用次数: 52

Abstract

While privacy preservation of data mining approaches has been an important topic for a number of years, privacy of social network data is a relatively new area of interest. Previous research has shown that anonymization alone may not be sufficient for hiding identity information on certain real world data sets. In this paper, we focus on understanding the impact of network topology and node substructure on the level of anonymity present in the network. We present a new measure, topological anonymity, that quantifies the amount of privacy preserved in different topological structures. The measure uses a combination of known social network metrics and attempts to identify when node and edge inference breeches arise in these graphs.
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测量社会网络拓扑匿名性
虽然数据挖掘方法的隐私保护多年来一直是一个重要的主题,但社交网络数据的隐私是一个相对较新的领域。先前的研究表明,仅仅匿名化可能不足以隐藏某些真实世界数据集上的身份信息。在本文中,我们着重于理解网络拓扑和节点子结构对网络中存在的匿名水平的影响。我们提出了一种新的度量,拓扑匿名,量化在不同拓扑结构中保留的隐私量。该测量方法结合了已知的社交网络指标,并试图识别这些图中何时出现节点和边缘推理漏洞。
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