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Offdiagonal complexity: A computationally quick complexity measure for graphs and networks

机译:斜对角复杂度:图形和网络的计算快速复杂度度量

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A vast variety of biological, social, and economical networks shows topologies drastically differing from random graphs; yet the quantitative characterization remains unsatisfactory from a conceptual point of view. Motivated from the discussion of small scale-free networks, a biased link distribution entropy is defined, which takes an extremum for a power-law distribution. This approach is extended to the node-node link cross-distribution, whose nondiagonal elements characterize the graph structure beyond link distribution, cluster coefficient and average path length. From here a simple (and computationally cheap) complexity measure can be defined. This offdiagonal complexity (OdC) is proposed as a novel measure to characterize the complexity of an undirected graph, or network. While both for regular lattices and fully connected networks OdC is zero, it takes a moderately low value for a random graph and shows high values for apparently complex structures as scale-free networks and hierarchical trees. The OdC approach is applied to the Helicobacter pylori protein interaction network and randomly rewired surrogates. (c) 2006 Published by Elsevier B.V.
机译:各种各样的生物学,社会和经济网络都显示出与随机图完全不同的拓扑。然而,从概念的角度来看,定量表征仍然不能令人满意。出于对小规模自由网络的讨论的动机,定义了一个有偏链路分配熵,该熵对幂律分布采取了极值。这种方法扩展到节点-节点链接交叉分布,其非对角线元素除了链接分布,聚类系数和平均路径长度以外,还描述了图结构。从这里可以定义一种简单(且计算上便宜)的复杂性度量。提出了这种对角复杂度(OdC)作为表征无向图或网络复杂度的一种新颖措施。对于规则晶格和完全连接的网络,OdC均为零,而对于随机图,它的取值较低,对于像无标度的网络和层次树一样的复杂结构,其取值较高。 OdC方法应用于幽门螺杆菌蛋白质相互作用网络并随机重新连接替代物。 (c)2006年由Elsevier B.V.发布

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