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Matching Graphs with Community Structure: A Concentration of Measure Approach

机译:图与社区结构的匹配:一种度量方法的集中

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In this paper, matching pairs of random graphs under the community structure model is considered. The problem emerges naturally in various applications such as privacy, image processing and DNA sequencing. A pair of randomly generated labeled graphs with pairwise correlated edges are considered. It is assumed that the graph edges are generated based on the community structure model. Given the labeling of the edges of the first graph, the objective is to recover the labels in the second graph. The problem is considered under two scenarios: i) with side-information where the community membership of the nodes in both graphs are known, and ii) without side-information where the community memberships are not known. A matching scheme is proposed which operates based on typicality of the adjacency matrices of the graphs. Achievability results are derived which provide theoretical guarantees for successful matching under specific assumptions on graph parameters. It is observed that for the proposed matching scheme, the conditions for successful matching do not change in the presence of side-information. Furthermore, a converse result is derived which characterizes a set of graph parameters for which matching is not possible.
机译:本文考虑了在社区结构模型下匹配随机图对。这个问题自然出现在各种应用中,例如隐私,图像处理和DNA测序。考虑一对具有成对相关边缘的随机生成的标记图。假设基于社区结构模型生成图边缘。给定第一个图形的边缘的标签,目标是恢复第二个图形中的标签。在两种情况下考虑该问题:i)具有附带信息,其中两个图中的节点的社区成员身份已知; ii)没有附带信息,其中社区成员身份未知。提出了一种基于图的邻接矩阵的典型性进行操作的匹配方案。得出了可实现性结果,这些结果为在图形参数的特定假设下成功匹配提供了理论保证。可以看出,对于所提出的匹配方案,成功的匹配条件在存在边信息的情况下不会改变。此外,得出相反结果,该结果表征了不可能进行匹配的一组图形参数。

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