识别私人社会网络中的相似邻里结构

L. Singh, Clare Schramm
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引用次数: 9

摘要

今天被分析的许多社交网络都是由涉及隐私的来源产生的。为了更好地量化社会科学家感兴趣的各种社会动态,已经引入了许多网络中心性措施。在本文中,我们提出了一个近似的社会网络,它允许在隐藏有关整个网络的信息的同时计算某些中心性度量。我们的近似不是一个摄动图,而是一个广义的树结构,其中包含图中每个节点的网络跳扩展集。我们证明了具有一定拓扑结构的网络,自然地隐藏节点并增加每个等价类中的候选节点数量。我们的图近似的存储自然地聚集了具有相似图展开结构的网络节点,因此,也可以作为根据网络中相似结构位置识别“类似”节点的基础。对于不够私有的树的分支,我们引入启发式方法,局部合并树的片段以强制k节点匿名。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Similar Neighborhood Structures in Private Social Networks
Many social networks being analyzed today are generated from sources with privacy concerns. A number of network centrality measures have been introduced to better quantify various social dynamics of interest to social scientists. In this paper, we propose an approximation of a social network that allows for certain centrality measures to be calculated while hiding information about the full network. Our approximation is not a perturbed graph, but rather a generalize trie structure containing a network hop expansion set for each node in the graph. We show that a network with certain topological structures, naturally hides nodes and increases the number of candidate nodes in each equivalence class. The storage of our graph approximation naturally clusters nodes of the network with similar graph expansion structure and therefore, can also be used as the basis for identifying ’like’ nodes in terms of similar structural position in the network. For branches of the trie that are not private enough, we introduce heuristics that locally merges segments of the trie to enforce k-node anonymity.
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