Papadopoulos Fragkiskos, Aldecoa Rodrigo, Krioukov Dmitri
Department of Electrical Engineering, Computer Engineering and Informatics, Cyprus University of Technology, Saripolou 33, Limassol 3036, Cyprus.
Northeastern University, Department of Physics, Boston, Massachusetts 02115, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2015 Aug;92(2):022807. doi: 10.1103/PhysRevE.92.022807. Epub 2015 Aug 12.
We introduce and explore a method for inferring hidden geometric coordinates of nodes in complex networks based on the number of common neighbors between the nodes. We compare this approach to the HyperMap method, which is based only on the connections (and disconnections) between the nodes, i.e., on the links that the nodes have (or do not have). We find that for high degree nodes, the common-neighbors approach yields a more accurate inference than the link-based method, unless heuristic periodic adjustments (or "correction steps") are used in the latter. The common-neighbors approach is computationally intensive, requiring O(t4) running time to map a network of t nodes, versus O(t3) in the link-based method. But we also develop a hybrid method with O(t3) running time, which combines the common-neighbors and link-based approaches, and we explore a heuristic that reduces its running time further to O(t2), without significant reduction in the mapping accuracy. We apply this method to the autonomous systems (ASs) Internet, and we reveal how soft communities of ASs evolve over time in the similarity space. We further demonstrate the method's predictive power by forecasting future links between ASs. Taken altogether, our results advance our understanding of how to efficiently and accurately map real networks to their latent geometric spaces, which is an important necessary step toward understanding the laws that govern the dynamics of nodes in these spaces, and the fine-grained dynamics of network connections.
我们介绍并探索了一种基于节点间共同邻居数量来推断复杂网络中节点隐藏几何坐标的方法。我们将这种方法与HyperMap方法进行比较,HyperMap方法仅基于节点之间的连接(和断开连接情况),即基于节点所具有(或不具有)的链路。我们发现,对于高度节点,除非在基于链路的方法中使用启发式周期性调整(或“校正步骤”),否则基于共同邻居的方法比基于链路的方法能产生更准确的推断。基于共同邻居的方法计算量很大,映射一个具有t个节点的网络需要O(t4)的运行时间,而基于链路的方法为O(t3)。但我们还开发了一种运行时间为O(t3)的混合方法,它结合了基于共同邻居和基于链路的方法,并且我们探索了一种启发式方法,可将其运行时间进一步降低到O(t2),同时映射精度不会显著降低。我们将此方法应用于自治系统(AS)互联网,并揭示了AS的软社区在相似性空间中如何随时间演变。我们通过预测AS之间的未来链路进一步证明了该方法的预测能力。总体而言,我们的结果推进了我们对如何高效、准确地将真实网络映射到其潜在几何空间的理解,这是理解这些空间中节点动态规律以及网络连接细粒度动态的重要必要步骤。