带应用的多路网络中的跨层中间性中心

Tanmoy Chakraborty, Ramasuri Narayanam
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引用次数: 19

摘要

几个现实生活中的社会系统见证了实体之间多种交互类型(或层)的存在,从而建立了一个共同进化网络的集合,称为多重网络。最近,人们对在多路网络中开发某些中心性度量非常感兴趣,以了解实体(下文称为顶点或节点)的影响力。本文研究多路网络中节点在其他节点之间最短路径上出现的频率问题。与单纯形网络相反,在多路网络中,节点之间的最短路径可能穿越多个层。在这种现象的激励下,我们提出了一个新的度量来解决上述问题,我们称之为跨层间中心性(CBC)。在确定多路网络中最短路径时,我们对CBC度量的定义考虑了多层之间的相互作用。我们提出了一种有效的计算CBC的算法,并表明它比该度量的naïve计算快得多。我们在两个真实的多路复用网络上进行了彻底的实验,证明了所提出算法的有效性。我们进一步展示了CBC的实际用途,将其应用于以下三种应用环境:发现多路网络中的非重叠社区结构,从多路合作网络中识别跨学科研究人员,以及选择消息传播的发起者。在所有这些应用场景中,发现基于所提出的CBC的各自解决方法的性能明显优于相应的基准方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-layer betweenness centrality in multiplex networks with applications
Several real-life social systems witness the presence of multiple interaction types (or layers) among the entities, thus establishing a collection of co-evolving networks, known as multiplex networks. More recently, there has been a significant interest in developing certain centrality measures in multiplex networks to understand the influential power of the entities (to be referred as vertices or nodes hereafter). In this paper, we consider the problem of studying how frequently the nodes occur on the shortest paths between other nodes in the multiplex networks. As opposed to simplex networks, the shortest paths between nodes can possibly traverse through multiple layers in multiplex networks. Motivated by this phenomenon, we propose a new metric to address the above problem and we call this new metric cross-layer betweenness centrality (CBC). Our definition of CBC measure takes into account the interplay among multiple layers in determining the shortest paths in multiplex networks. We propose an efficient algorithm to compute CBC and show that it runs much faster than the naïve computation of this measure. We show the efficacy of the proposed algorithm using thorough experimentation on two real-world multiplex networks. We further demonstrate the practical utility of CBC by applying it in the following three application contexts: discovering non-overlapping community structure in multiplex networks, identifying interdisciplinary researchers from a multiplex co-authorship network, and the initiator selection for message spreading. In all these application scenarios, the respective solution methods based on the proposed CBC are found to be significantly better performing than that of the corresponding benchmark approaches.
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