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Connectivity analysis of the global shipping network by eigenvalue decomposition

机译:特征值分解的全球航运网络的连接分析

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摘要

Maritime shipping necessitates flexible and cost-effective port access worldwide through the global shipping network. This paper presents an efficient method to identify major port communities, and analyses the network connectivity of the global shipping network based on community structure. The global shipping network is represented by a signless Laplacian matrix which can be decomposed to generate its eigenvectors and corresponding eigenvalues. The largest gaps between the eigenvalues were then used to determine the optimal number of communities within the network. The eigenvalue decomposition method offers the advantage of detecting port communities without relying on a priori assumption about the number of communities and the size of each community. By applying this method to a dataset collected from seven world leading liner shipping companies, we found that the ports are clustered into three communities in the global container shipping network, which is consistent with the major container trade routes. The sparse linkages between port communities indicate where access is relatively poor.
机译:海上航运需要通过全球航运网络全球灵活且经济高效的港口访问。本文介绍了识别主要港口社区的有效方法,并根据社区结构分析全球航运网络的网络连接。全球航运网络由无特征拉普拉斯矩阵表示,可以分解以产生其特征向量和相应的特征值。然后使用特征值之间的最大间隙来确定网络内的最佳社区数。特征值分解方法提供了检测端口社区的优点,而无需依赖于关于社区数量和每个社区的大小的先验假设。通过将这种方法应用于从七个世界领先的班轮运输公司收集的数据集,我们发现港口集中在全球集装箱运输网络中的三个社区,这与主要集装箱贸易路线一致。端口社区之间的稀疏连接表示访问相对较差的位置。

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