流动中心性:一个稳定的节点中心性度量

Charles F. Mann, M. McGee, E. Olinick, D. Matula
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引用次数: 0

摘要

本文介绍了从分层最大并发流问题(HMCFP)中确定的节点中心性度量——流经中心性。根据一个节点在网络中充当枢纽的程度,这种中心性度量被定义为流经该节点的流量占该节点总流量的比例。将流量中心性与常用的紧密中心性、中间中心性和流中间中心性进行比较,并与稳定中间中心性进行比较,以衡量网络拓扑知识不完整或处于过渡状态时中心性的稳定性(即准确性)。扰动不会像改变基于测地线的其他类型的中心性值那样改变基于流量的节点的流过中心性值。流动中心性测量克服了夸大或低估重要参与者在社交网络中扮演的角色的问题。流经中心性是典型的,因为它是由一个自然的、普遍适用于所有网络的实现流决定的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flowthrough Centrality: A Stable Node Centrality Measure
This paper introduces flowthrough centrality, a node centrality measure determined from the hierarchical maximum concurrent flow problem (HMCFP). Based upon the extent to which a node is acting as a hub within a network, this centrality measure is defined to be the fraction of the flow passing through the node to the total flow capacity of the node. Flowthrough centrality is compared to the commonly-used centralities of closeness centrality, betweenness centrality, and flow betweenness centrality, as well as to stable betweenness centrality to measure the stability (i.e., accuracy) of the centralities when knowledge of the network topology is incomplete or in transition. Perturbations do not alter the flowthrough centrality values of nodes that are based upon flow as much as they do other types of centrality values that are based upon geodesics. The flowthrough centrality measure overcomes the problem of overstating or understating the roles that significant actors play in social networks. The flowthrough centrality is canonical in that it is determined from a natural, realized flow universally applicable to all networks.
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