Large very dense subgraphs in a stream of edges

IF 1.4 Q2 SOCIAL SCIENCES, INTERDISCIPLINARY Network Science Pub Date : 2022-01-25 DOI:10.1017/nws.2021.17
Claire Mathieu, Michel de Rougemont
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Abstract

We study the detection and the reconstruction of a large very dense subgraph in a social graph with n nodes and m edges given as a stream of edges, when the graph follows a power law degree distribution, in the regime when Abstract Image $m=O(n. \log n)$ . A subgraph S is very dense if it has Abstract Image $\Omega(|S|^2)$ edges. We uniformly sample the edges with a Reservoir of size Abstract Image $k=O(\sqrt{n}.\log n)$ . Our detection algorithm checks whether the Reservoir has a giant component. We show that if the graph contains a very dense subgraph of size Abstract Image $\Omega(\sqrt{n})$ , then the detection algorithm is almost surely correct. On the other hand, a random graph that follows a power law degree distribution almost surely has no large very dense subgraph, and the detection algorithm is almost surely correct. We define a new model of random graphs which follow a power law degree distribution and have large very dense subgraphs. We then show that on this class of random graphs we can reconstruct a good approximation of the very dense subgraph with high probability. We generalize these results to dynamic graphs defined by sliding windows in a stream of edges.

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边流中的大而密集的子图
我们研究了一个具有n个节点和m条边的社会图中一个非常密集的大子图的检测和重建,当图遵循幂律度分布时,在$m=O(n. \log n)$的状态下。如果子图S有$\Omega(|S|^2)$条边,它就是非常密集的。我们用大小为$k=O(\sqrt{n}.\log n)$的储层对边缘进行均匀采样。我们的检测算法检查水库是否有一个巨大的组件。我们证明,如果图包含一个大小为$\Omega(\sqrt{n})$的非常密集的子图,那么检测算法几乎肯定是正确的。另一方面,遵循幂律度分布的随机图几乎肯定没有非常密集的大子图,检测算法几乎肯定是正确的。我们定义了一种新的随机图模型,它遵循幂律度分布,并且具有很大的非常密集的子图。然后,我们证明了在这类随机图上,我们可以以高概率重建非常密集子图的良好近似值。我们将这些结果推广到由边流中的滑动窗口定义的动态图。
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来源期刊
Network Science
Network Science SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
3.50
自引率
5.90%
发文量
24
期刊介绍: Network Science is an important journal for an important discipline - one using the network paradigm, focusing on actors and relational linkages, to inform research, methodology, and applications from many fields across the natural, social, engineering and informational sciences. Given growing understanding of the interconnectedness and globalization of the world, network methods are an increasingly recognized way to research aspects of modern society along with the individuals, organizations, and other actors within it. The discipline is ready for a comprehensive journal, open to papers from all relevant areas. Network Science is a defining work, shaping this discipline. The journal welcomes contributions from researchers in all areas working on network theory, methods, and data.
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