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Generalised power graph compression reveals dominant relationship patterns in complex networks

机译:广义功率图压缩揭示了复杂网络中的主导关系模式

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We introduce a framework for the discovery of dominant relationship patterns in complex networks, by compressing the networks into power graphs with overlapping power nodes. When paired with enrichment analysis of node classification terms, the most compressible sets of edges provide a highly informative sketch of the dominant relationship patterns that define the network. In addition, this procedure also gives rise to a novel, link-based definition of overlapping node communities in which nodes are defined by their relationships with sets of other nodes, rather than through connections within the community. We show that this completely general approach can be applied to undirected, directed, and bipartite networks, yielding valuable insights into the large-scale structure of real-world networks, including social networks and food webs. Our approach therefore provides a novel way in which network architecture can be studied, defined and classified.
机译:通过将网络压缩为具有重叠功率节点的功率图,我们引入了一个框架,用于发现复杂网络中的主导关系模式。与节点分类项的富集分析结合使用时,最可压缩的边集为定义网络的主导关系模式提供了高度有用的信息。另外,此过程还引起了重叠节点社区的新颖的,基于链接的定义,其中节点是通过节点与其他节点集的关系而不是通过社区内的连接来定义的。我们表明,这种完全通用的方法可以应用于无向,有向和双向网络,从而对现实世界的大型结构(包括社交网络和食物网)产生有价值的见解。因此,我们的方法提供了一种新颖的方法,可以在其中研究,定义和分类网络体系结构。

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