航空运输网络统计主干滤波技术探索

A. Yassin, H. Cherifi, H. Seba, O. Togni
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引用次数: 1

摘要

交通网络的密集特性扩大了其可视化和处理的挑战。提出了几种统计主干提取技术,在保留基本信息的同时减小主干的大小。在这里,我们对美国加权航空运输网络中七种突出的统计骨干提取技术进行了比较评估。根据航空公司使用的商业模式,可以将机场分为枢纽机场、辐条机场和重点机场。我们使用各种性能度量来比较提取的主干。我们考虑了每种方法所保留的组件数量、大小、机场类型、边缘类型的比例和权重。结果表明,增强配置模型(Enhanced Configuration Model, ECM)滤波器倾向于保留辐条机场之间的边缘,从而揭示连接区域辐条机场的基础设施。相比之下,替代过滤器(视差、Polya Urn、边际似然、噪声校正、全球统计显著性(GLOSS)、局部自适应网络稀疏化(LANS))突出了枢纽和辐、焦点和辐以及辐和辐机场之间的边缘,揭示了航空公司使用的更多枢纽和辐基础。此外,视差滤波器、边际似然滤波器和噪声校正滤波器保持了最高的权重比例,而Polya Urn滤波器和ECM滤波器保持了最低的权重比例。GLOSS和lan过滤器在两个极端之间保持适度的权重。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Statistical Backbone Filtering Techniques in the Air Transportation Network
The dense nature of transportation networks expands the challenge of their visualization and processing. Several statistical backbone extraction techniques are proposed to reduce their size while keeping essential information. Here, we perform a comparative evaluation of seven prominent statistical backbone extraction techniques in the USA weighted air transportation network. One can classify the airports into hubs, spokes, and focus airports based on the business models used by the airlines. We compare the extracted backbones using various performance measures. We consider the number of components, sizes, the fraction of airport type, edge type, and weights preserved by each method. Results show that the Enhanced Configuration Model (ECM) Filter tends to preserve edges between spoke airports uncovering the infrastructure connecting the regional spoke airports. In contrast, the alternative filters (Disparity, Polya Urn, Marginal Likelihood, Noise Corrected, Global Statistical Significance (GLOSS), Locally Adaptive Network Sparsification (LANS)) highlight edges between the hub and spoke, focus and spoke, and spoke and spoke airports revealing more of the hub and spoke foundation used by airlines. Moreover, the Disparity Filter, Marginal Likelihood Filter, and Noise Corrected Filter preserve the highest proportion of weights while Polya Urn Filter and ECM Filter keep the lowest. The GLOSS and LANS Filters maintain a moderate fraction of weights between the two extremes.
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