一些随机网络的收敛性

M. Bányai, T. Nepusz, László Négyessy, F. Bazsó
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引用次数: 4

摘要

复杂的数据通常可以用随机图或网络来表示。现实世界网络的重要特征可以用一种叫做小世界网络的特殊随机图来描述。小世界网络出现在许多情况下,从系统生物学到分布式技术系统。在这里,我们将探讨专业化现实世界网络的功能和结构特性如何反映在其边和节点的收敛-发散特性中。引入了一种新的边缘收敛度度量,并对不同规则生成的小世界网络进行了研究。所得结果与Erdős-Rényi随机网络进行了比较。我们发现收敛度可以灵敏地区分我们所研究的随机网络的不同模型。
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Convergence properties of some random networks
Complex data can often be represented in terms of random graphs or networks. Important features of real world networks can be described by a special class of random graphs called small-world networks. Small-world networks emerge in many contexts, from systems biology to distributed technological systems. Here we ask how the functional and structural properties of specialized real world networks are reflected in convergence-divergence properties of their edges and nodes. We introduced a novel metric called edge convergence degree and studied it on small-world networks generated according to different rules. The obtained results were compared with Erdős-Rényi random networks. We found that convergence degree sensitively distinguishes different models of random networks we studied.
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