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Mining the City Data: Making Sense of Cities with Self-Organizing Maps

机译:挖掘城市数据:通过自组织地图了解城市

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摘要

Cities are instances of complex structures. They present several conflicting dynamics, emergence of unexpected patterns of mobility and behavior, as well as some degree of adaptation. To make sense of several aspects of cities, such as traffic flow, mobility, social welfare, social exclusion, and commodities, data mining may be an appropriate technique. Here, we analyze 72 neighborhoods in Mexico City in terms of economic, demographic, mobility, air quality and several other variables in years 2000 and in 2010. The visual information obtained by self-organizing map shows interesting and previously unseen patterns. For city planners, it is important to know how neighborhoods are distributed accordingly to demographic and economic variables. Also, it is important to observe how neighbors geographically close are distributed in terms of the mentioned variables. Self-organizing maps are a tool suitable for planners to seek for those correlations, as we show in our results.
机译:城市是复杂结构的实例。他们表现出几种相互矛盾的动力,出乎意料的活动方式和行为方式的出现,以及某种程度的适应性。为了理解城市的各个方面,例如交通流量,出行,社会福利,社会排斥和商品,数据挖掘可能是一种合适的技术。在这里,我们分析了2000年和2010年墨西哥城的72个社区,包括经济,人口,出行,空气质量和其他几个变量。通过自组织地图获得的视觉信息显示出有趣的,以前未见过的图案。对于城市规划者来说,重要的是要知道邻里如何根据人口和经济变量进行分配。同样,重要的是要观察在地理上相近的邻居如何根据上述变量进行分布。正如我们的结果所示,自组织图是适合计划人员寻求这些相关性的工具。

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