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Minimizing effects of scale distortion for spatially grouped census data using rough sets

机译:使用粗糙集最小化规模失真对空间分组的人口普查数据的影响

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摘要

Census data has been widely used for community evaluation based on demographic and socioeconomic variables. However, the analysis is typically associated with specific areal units and the results often change when the size of the census configuration changes leading to scale distortions. Various approaches such as optimal zoning systems and multivariate statistical analysis have been developed to address the scale problem. But limitations in these approaches have led to the use of non-statistical methods to tackle the scale problem. This study combines a non-statistical method with descriptive statistical measures to develop a rough sets approach to constructing a census-based deprivation index (DI) and to determine its relationship to a recent immigrant population using the 2001 Canadian census. Application of the approach in the Greater Vancouver Regional District shows that rough sets can stabilize relationships for spatially grouped census data by minimizing scale distortions. Scale sensitivity measures are also estimated to translate DI relationships across three census configurations. The rough sets approach is suitable for areal data analysis because it is resistant to nonlinearity, outliers, and assumes no prior relationship between variables.
机译:基于人口统计和社会经济变量,人口普查数据已广泛用于社区评估。然而,分析通常与特定的区域单位相关联,并且在人口普查配置的规模导致缩放失真的变化时,结果通常会发生变化。已经开发出各种方法,例如最佳分区系统和多变量统计分析以解决规模问题。但这些方法的限制导致使用非统计方法来解决规模问题。本研究结合了一种非统计方法,具有描述性统计措施,以开发粗糙集的方法来构建基于人口普查的剥夺指数(DI),并使用2001年加拿大人口普查确定其与最近的移民群体的关系。在大温哥华地区的方法中的应用表明,粗糙集可以通过最大限度地减少缩放扭曲来稳定空间分组的人口普查数据的关系。还估计规模灵敏度措施以翻译三个人口普查配置的迪关系。粗糙集的方法适用于区域数据分析,因为它对非线性,异常值抵抗并且不假设变量之间没有先前的关系。

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