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Determining Factors for Slum Growth with Predictive Data Mining Methods

机译:预测数据挖掘方法确定贫民窟增长的因素

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Currently, more than half of the world’s population lives in cities. Out of these more than four billion people, almost one quarter live in slums or informal settlements. In order to improve living conditions and provide possible solutions for the major problems in slums (e.g., insufficient infrastructure), it is important to understand the current situation of this form of settlement and its development. There are many different models that attempt to simulate the development of slums. In this paper, we present data mining models that correlate information about the temporal development of slums with other economic, ecologic, and demographic factors in order to identify dependencies. Different learning algorithms, such as decision rules and decision trees, are used to learn descriptive models for slum development from data, and the results are evaluated with commonly used attribute evaluation methods known from data mining. The results confirm various previously made statements about slum development in a quantitative way, such as the fact that slum development is very strongly linked to the demographic development of a country. Applying the introduced classification models to the most recent data for different regions, it can be shown that the slum development in Africa is expected to be above average.
机译:目前,世界上超过一半的人口居住在城市。在这40亿人口中,近四分之一住在贫民窟或非正式定居点。为了改善生活条件并为贫民窟的主要问题(例如基础设施不足)提供可能的解决方案,重要的是了解这种定居形式及其发展的现状。有许多不同的模型试图模拟贫民窟的发展。在本文中,我们提出了数据挖掘模型,这些模型将有关贫民窟的时间发展信息与其他经济,生态和人口统计学因素相关联,以识别依赖性。决策规则和决策树等不同的学习算法用于从数据中学习贫民窟发展的描述性模型,并使用数据挖掘中已知的常用属性评估方法对结果进行评估。结果证实了以前关于贫民窟发展的各种定量说法,例如,贫民窟的发展与一个国家的人口发展紧密相关。将引入的分类模型应用于不同地区的最新数据,可以表明非洲的贫民窟发展预计将高于平均水平。

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