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Multi-scale structure and topological anomaly detection via a new network statistic: The onion decomposition

机译:通过新的网络统计数据进行多尺度结构和拓扑异常检测:洋葱分解

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We introduce a network statistic that measures structural properties at the micro-, meso-, and macroscopic scales, while still being easy to compute and interpretable at a glance. Our statistic, the onion spectrum, is based on the onion decomposition, which refines the k-core decomposition, a standard network fingerprinting method. The onion spectrum is exactly as easy to compute as the k-cores: It is based on the stages at which each vertex gets removed from a graph in the standard algorithm for computing the k-cores. Yet, the onion spectrum reveals much more information about a network, and at multiple scales; for example, it can be used to quantify node heterogeneity, degree correlations, centrality, and tree- or lattice-likeness. Furthermore, unlike the k-core decomposition, the combined degree-onion spectrum immediately gives a clear local picture of the network around each node which allows the detection of interesting subgraphs whose topological structure differs from the global network organization. This local description can also be leveraged to easily generate samples from the ensemble of networks with a given joint degree-onion distribution. We demonstrate the utility of the onion spectrum for understanding both static and dynamic properties on several standard graph models and on many real-world networks.
机译:我们介绍了一种网络统计数据,它可以在微观,中观和宏观尺度上测量结构特性,同时仍然易于计算和一目了然。我们的统计数据,即洋葱光谱,是基于洋葱分解而来的,它分解了k-core分解(一种标准的网络指纹识别方法)。洋葱光谱与k核一样容易计算:它基于在计算k核的标准算法中从图中删除每个顶点的阶段。然而,洋葱光谱揭示了有关网络的更多信息,并且涉及多个范围。例如,它可用于量化节点异质性,程度相关性,中心性和树状或格状。此外,与k核分解不同,组合的度数洋葱光谱可立即给出每个节点周围网络的清晰局部图片,从而可以检测拓扑结构不同于全局网络组织的有趣子图。还可以利用该局部描述从具有给定联合度-洋葱分布的网络集合中轻松生成样本。我们展示了洋葱光谱在理解几种标准图形模型和许多实际网络上的静态和动态特性方面的实用性。

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