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Entree


Identification of city motifs: a method based on modularity and similarity between hierarchical features of urban networks

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Autor(es):
Dominguese, Guilherme S. ; Tokuda, Eric K. ; Costa, Luciano da F.
Número total de Autores: 3
Tipo de documento: Artigo Científico
Fonte: JOURNAL OF PHYSICS-COMPLEXITY; v. 3, n. 4, p. 24-pg., 2022-12-01.
Resumo

Several natural and theoretical networks can be broken down into smaller portions, henceforth called neighborhoods. The more frequent of these can then be understood as motifs of the network, being therefore important for better characterizing and understanding of its 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 a methodology capable of automatically identifying motifs respective to streets networks, i.e. graphs obtained from city plans by considering street junctions and terminations as nodes while the links are defined by the streets. Interesting results are described, including the identification of nine characteristic motifs, which have been obtained by three important considerations: (i) adoption of five hierarchical measurements to locally characterize the neighborhoods of nodes in the streets networks; (ii) adoption of an effective coincidence similarity 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 perspectives, 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. (AU)

Processo FAPESP: 19/01077-3 - Integrando imagens e redes complexas na análise de cidades
Beneficiário:Eric Keiji Tokuda
Modalidade de apoio: Bolsas no Brasil - Pós-Doutorado