Kivimäki Ilkka, Lebichot Bertrand, Saramäki Jari, Saerens Marco
Université catholique de Louvain, ICTEAM/LSM, Place des Doyens 1, 1348 Louvain-la-Neuve, Belgium.
Aalto University, Department of Computer Science, P.O.Box 15400, FI-00076 Aalto, Finland.
Sci Rep. 2016 Feb 1;6:19668. doi: 10.1038/srep19668.
This paper introduces two new closely related betweenness centrality measures based on the Randomized Shortest Paths (RSP) framework, which fill a gap between traditional network centrality measures based on shortest paths and more recent methods considering random walks or current flows. The framework defines Boltzmann probability distributions over paths of the network which focus on the shortest paths, but also take into account longer paths depending on an inverse temperature parameter. RSP's have previously proven to be useful in defining distance measures on networks. In this work we study their utility in quantifying the importance of the nodes of a network. The proposed RSP betweenness centralities combine, in an optimal way, the ideas of using the shortest and purely random paths for analysing the roles of network nodes, avoiding issues involving these two paradigms. We present the derivations of these measures and how they can be computed in an efficient way. In addition, we show with real world examples the potential of the RSP betweenness centralities in identifying interesting nodes of a network that more traditional methods might fail to notice.
本文介绍了基于随机最短路径(RSP)框架的两种新的紧密相关的中介中心性度量,它们填补了基于最短路径的传统网络中心性度量与考虑随机游走或电流的最新方法之间的空白。该框架在网络路径上定义了玻尔兹曼概率分布,这些分布侧重于最短路径,但也根据逆温度参数考虑更长的路径。RSP此前已被证明在定义网络距离度量方面很有用。在这项工作中,我们研究它们在量化网络节点重要性方面的效用。所提出的RSP中介中心性以最佳方式结合了使用最短路径和纯随机路径来分析网络节点角色的思想,避免了涉及这两种范式的问题。我们给出了这些度量的推导以及如何高效计算它们。此外,我们通过实际例子展示了RSP中介中心性在识别网络中有趣节点方面的潜力,而这些节点可能是更传统的方法未能注意到的。