Private social network analysis: how to assemble pieces of a graph privately

Keith B. Frikken, P. Golle
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引用次数: 67

Abstract

Connections in distributed systems, such as social networks, online communities or peer-to-peer networks, form complex graphs. These graphs are of interest to scientists in fields as varied as marketing, epidemiology and psychology. However, knowledge of the graph is typically distributed among a large number of subjects, each of whom knows only a small piece of the graph. Efforts to assemble these pieces often fail because of privacy concerns: subjects refuse to share their local knowledge of the graph. To assuage these privacy concerns, we propose reconstructing the whole graph privately, i.e., in a way that hides the correspondence between the nodes and edges in the graph and the real-life entities and relationships that they represent. We first model the privacy threats posed by the private reconstruction of a distributed graph. Our model takes into account the possibility that malicious nodes may report incorrect information about the graph in order to facilitate later attempts to de-anonymize the reconstructed graph. We then propose protocols to privately assemble the pieces of a graph in ways that mitigate these threats. These protocols severely restrict the ability of adversaries to compromise the privacy of honest subjects.
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私人社交网络分析:如何私下组装图的碎片
分布式系统中的连接,如社交网络、在线社区或点对点网络,形成复杂的图。这些图表引起了市场营销、流行病学和心理学等不同领域的科学家的兴趣。然而,图的知识通常分布在大量的受试者中,每个受试者只知道图的一小部分。由于隐私方面的考虑,整合这些片段的努力常常失败:受试者拒绝分享他们对图表的局部知识。为了缓解这些隐私问题,我们建议私下重建整个图,即隐藏图中节点和边之间的对应关系以及它们所代表的现实生活实体和关系。我们首先对分布式图的私有重构所带来的隐私威胁进行建模。我们的模型考虑了恶意节点可能报告关于图的错误信息的可能性,以便于以后尝试对重构图进行去匿名化。然后,我们提出协议,以减轻这些威胁的方式私下组装图的各个部分。这些协议严格限制了对手破坏诚实主体隐私的能力。
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