论文标题
层次特征之间的相似性揭示了城市图案
City Motifs as Revealed by Similarity Between Hierarchical Features
论文作者
论文摘要
几个天然和理论网络可以分为较小的部分,也可以分为与邻里相对应的子图。然后,这些社区中的频率越多,可以理解为网络的主题,因此对于更好地表征和理解整体结构很重要。网络科学领域的几个发展依赖于这个有趣的概念,在系统生物学,计算神经科学,经济和生态学等领域中有足够的应用。目前的工作旨在报告一种能够识别与街道网络的图案的无监督方法,后者通过将街道连接和终止视为节点,而在街道定义的链接时,该方法与从城市计划中获得的图相对应。描述了显着的结果,包括识别九个稳定且内容丰富的图案,这是三个至关重要的因素允许的:(i)采用五个分层测量值以局部表征街道网络中节点的邻域; (ii)采用将数据集转化为网络的有效巧合方法; (iii)使用社区发现方法以统计术语对图案的定义。从几个角度来看,九个确定的基序是对原始城市中的相互相似性,可视化,测量结果和地理邻接的表征和讨论的。还介绍的是对所采用特征对获得网络的影响的分析,以及能够为城市分配参考图案的简单监督学习方法。
Several natural and theoretical networks can be broken down into smaller portions, or subgraphs corresponding to neighborhoods. The more frequent of these neighborhoods can then be understood as motifs of the network, being therefore important for better characterizing and understanding of the overall structure. Several developments in network science have relied on this interesting concept, with ample applications in areas including systems biology, computational neuroscience, economy and ecology. The present work aims at reporting an unsupervised methodology capable of identifying motifs respective to streets networks, the latter corresponding to graphs obtained from city plans by considering street junctions and terminations as nodes while the links are defined by the streets. Remarkable results are described, including the identification of nine stable and informative motifs, which have been allowed by three critically important factors: (i) adoption of five hierarchical measurements to locally characterize the neighborhoods of nodes in the streets networks; (ii) adoption of an effective coincidence methodology for translating datasets into networks; and (iii) definition of the motifs in statistical terms by using community finding methodology. The nine identified motifs are characterized and discussed from several perspective, including their mutual similarity, visualization, histograms of measurements, and geographical adjacency in the original cities. Also presented is the analysis of the effect of the adopted features on the obtained networks as well as a simple supervised learning method capable of assigning reference motifs to cities.