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A Bayesian method for matching two similar graphs without seeds

机译:一种贝叶斯方法,用于匹配两个没有种子的类似图形

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Approximate graph matching (AGM) refers to the problem of mapping the vertices of two structurally similar graphs, which has applications in social networks, computer vision, chemistry, and biology. Given its computational cost, AGM has mostly been limited to either small graphs (e.g., tens or hundreds of nodes), or to large graphs in combination with side information beyond the graph structure (e.g., a seed set of pre-mapped node pairs). In this paper, we cast AGM in a Bayesian framework based on a clean definition of the probability of correctly mapping two nodes, which leads to a polynomial time algorithm that does not require side information. Node features such as degree and distances to other nodes are used as fingerprints. The algorithm proceeds in rounds, such that the most likely pairs are mapped first; these pairs subsequently generate additional features in the fingerprints of other nodes. We evaluate our method over real social networks and show that it achieves a very low matching error provided the two graphs are sufficiently similar. We also evaluate our method on random graph models to characterize its behavior under various levels of node clustering.
机译:近似图形匹配(AGM)是指映射两个结构上类似的图形的顶点的问题,它在社交网络,计算机视觉,化学和生物学中具有应用。鉴于其计算成本,AGM主要限于小图(例如,数百个节点),或者与图形结构之外的侧信息组合到大图(例如,预映射节点对的种子组) 。在本文中,我们基于正确映射两个节点的概率的干净定义,我们在贝叶斯框架中投射AGM,这导致不需要侧面信息的多项式时间算法。节点特征,例如与其他节点的程度和距离用作指纹。该算法在舍入中进行,使得最可能的成对首先映射;这些对随后在其他节点的指纹中生成附加功能。我们通过真正的社交网络评估我们的方法,并表明它实现了一个非常低的匹配误差,只要两个图表足够相似。我们还在随机图模型上评估了我们的方法,以在各种级别的节点群集下表征其行为。

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