Publication | Closed Access
Selection of Streets from a Network Using Self‐Organizing Maps
90
Citations
12
References
2004
Year
Urban GeographySelf-organizing SystemNetwork ScienceEngineeringData ScienceData MiningSom Training ProcessSpatial NetworkStreet NetworkImportant StreetsNetwork AnalysisTopological RepresentationUrban PlanningComputer ScienceNetwork ModelingSocial SciencesSelf-organizing Map
Abstract We propose a novel approach to selection of important streets from a network, based on the technique of a self‐organizing map (SOM), an artificial neural network algorithm for data clustering and visualization. Using the SOM training process, the approach derives a set of neurons by considering multiple attributes including topological, geometric and semantic properties of streets. The set of neurons constitutes a SOM, with which each neuron corresponds to a set of streets with similar properties. Our approach creates an exploratory linkage between the SOM and a street network, thus providing a visual tool to cluster streets interactively. The approach is validated with a case study applied to the street network in Munich, Germany.
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