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Graphs over time

机译:随着时间的推移

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How do real graphs evolve over time? What are "normal" growth patterns in social, technological, and information networks? Many studies have discovered patterns in static graphs, identifying properties in a single snapshot of a large network, or in a very small number of snapshots; these include heavy tails for in- and out-degree distributions, communities, small-world phenomena, and others. However, given the lack of information about network evolution over long periods, it has been hard to convert these findings into statements about trends over time.Here we study a wide range of real graphs, and we observe some surprising phenomena. First, most of these graphs densify over time, with the number of edges growing super-linearly in the number of nodes. Second, the average distance between nodes often shrinks over time, in contrast to the conventional wisdom that such distance parameters should increase slowly as a function of the number of nodes (like O(log n) or O(log(log n)).Existing graph generation models do not exhibit these types of behavior, even at a qualitative level. We provide a new graph generator, based on a "forest fire" spreading process, that has a simple, intuitive justification, requires very few parameters (like the "flammability" of nodes), and produces graphs exhibiting the full range of properties observed both in prior work and in the present study.
机译:实图如何随时间演变?社会,技术和信息网络中的“正常”增长模式是什么?许多研究发现了静态图中的模式,它们在大型网络的单个快照中或在很少数量的快照中识别属性。其中包括用于内部和外部分布的粗尾,社区,小世界现象等。但是,由于长期以来缺乏有关网络演化的信息,因此很难将这些发现转化为关于一段时间内趋势的陈述。在这里我们研究了各种各样的真实图形,并观察到一些令人惊讶的现象。首先,随着时间的流逝,大多数这些图都变得致密,边的数量在节点的数量上呈超线性增长。其次,节点之间的平均距离通常会随时间缩小,这与传统的观点相反,即这种距离参数应随着节点数量的增加而缓慢增加(例如O(log n)或O( log(log n))。现有的图形生成模型即使在定性水平上也没有表现出这些类型的行为。我们基于“森林大火”传播过程提供了一种新的图形生成器,它具有简单直观的辩解,需要很少的参数(例如节点的“可燃性”),并生成显示出在先前工作和本研究中均观察到的所有性能范围的图形。

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