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Directionality of real world networks as predicted by path length in directed and undirected graphs

机译:通过有向图和无向图的路径长度预测的现实世界网络的方向性

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摘要

Many real world networks either support ordered processes, or are actually representations of such processes. However, the same networks contain large strong connectivity components and long circles, which hide a possible inherent order, since each vertex can be reached from each vertex in a directed path. Thus, the presence of an inherent directionality in networks may be hidden. We here discuss a possible definition of such a directionality and propose a method to detect it. Several common algorithms, such as the betweenness centrality or the degree, measure various aspects of centrality in networks. However, they do not address directly the issue of inherent directionality. The goal of the algorithm discussed here is the detection of global directionality in directed networks. Such an algorithm is essential to detangle complex networks into ordered process. We show that indeed the vast majority of measured real world networks have a clear directionality. Moreover, this directionality can be used to classify vertices in these networks from sources to sinks. Such an algorithm can be highly useful in order to extract a meaning from large interaction networks assembled in many domains.
机译:许多现实世界的网络要么支持有序过程,要么实际上是这些过程的表示。但是,相同的网络包含大型的强连通性组件和长圆形,这掩盖了可能的固有顺序,因为可以从定向路径中的每个顶点到达每个顶点。因此,可以隐藏网络中固有方向性的存在。我们在这里讨论这种方向性的可能定义,并提出一种检测它的方法。几种常见的算法(例如,中间性或程度)可衡量网络中中心性的各个方面。但是,它们没有直接解决固有方向性的问题。此处讨论的算法的目标是检测定向网络中的整体方向性。这种算法对于将复杂的网络分解为有序过程至关重要。我们表明,实际上,绝大多数测得的真实世界网络都具有明确的方向性。此外,这种方向性可以用来对这些网络中从源到汇的顶点进行分类。为了从在许多领域中组装的大型交互网络中提取含义,这种算法可能非常有用。

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