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Factor analysis of key nodes in urban rail network

机译:城市轨道交通网络关键节点的因子分析

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摘要

This paper builds important evaluation indexes for urban rail transit network. Besides degrees and betweenness in complex network, I add PageRank value and passenger flow indicators in consideration of the urban rail transit network topology model to better evaluate relationships between stations in urban rail transit network and offer theoretical guarantee for risks. We provide factor analysis method to calculate the importance degree of each station in the networks. Then illustrated by the case of Beijing Railway, and we compare the results with K-means cluster analysis. The results show that the factor analysis and the cluster analysis has consistence characteristics in macroscopic, but factor analysis can reflect the over-rall properties of indicators better and possess the explicit presentation. It has better actual leading meanings.
机译:本文建立了城市轨道交通网络的重要评价指标。除了复杂网络中的程度和相互关系外,我还考虑了城市轨道交通网络拓扑模型,添加了PageRank值和客流指标,以更好地评估城市轨道交通网络中站点之间的关系,并为风险提供理论上的保证。我们提供因子分析方法来计算网络中每个站点的重要程度。然后以北京铁路为例进行说明,并将结果与​​K-means聚类分析进行比较。结果表明,因子分析和聚类分析在宏观上具有一致性特征,但因子分析可以较好地反映指标的总体特征,并具有明确的表述。它具有更好的实际领导意义。

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