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Clustering the seoul metropolitan area by travel patterns based on a deep belief network

机译:基于深度信念网络的出行方式将首尔都市圈聚类

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It is very useful to divide an urban area into several homogeneous zones when managing a city. Conventionally, clustering urban areas has depended upon the intuition and expertise of urban planners. On the other hand, the present study regards specific travel patterns of people living in an urban zone as a key variable to distinguish that zone from others. A K-means algorithm was adopted to cluster zones of the Seoul metropolitan area, after large dimensional origin-destination flows, which were elicited from smart-card data, were reduced by using a principal component analysis. A more elaborated approach, a deep belief network that stacked multiple restricted Boltzmann machines, was also used to reduce the dimension of origin-destination travel flows. The latter approach unveiled more hidden nonlinear aspects of clustering than provided by either the conventional zoning convention or the PCA-based approach.
机译:在管理城市时,将市区划分为几个同质区非常有用。按照惯例,将城市区域聚集起来取决于城市规划者的直觉和专业知识。另一方面,本研究将居住在市区的人们的特定出行方式视为区分该地区与其他地区的关键变量。在使用主成分分析减少了智能卡数据引起的大尺寸原点到目的地流之后,采用K均值算法对首尔都会区进行聚类。更为复杂的方法是,将多个受限制的Boltzmann机器堆叠在一起的深度置信网络,也被用于减小起点-目的地旅行流的尺寸。与传统的分区约定或基于PCA的方法相比,后一种方法揭示了更多的隐藏的聚类非线性方面。

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