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Linking spatial data from different sources: the effects of change of support

机译:链接来自不同来源的空间数据:支持变更的影响

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摘要

A nationwide Environmental Public Health Tracking program is being created to monitor environmental impacts on human health. This, and many other efforts to relate environmental and health outcomes, depend largely on the synthesis of existing data sets; little new data are being generated for this purpose. More often than not, the data available for such synthesis have been collected for different geographic or spatial units, and any set of these units may be different from the one of interest. In this paper, we compare and contrast two approaches that can be used within a Geographic Information System to link spatial data from different sources. The first approach works with centroids of areal units and is commonly used in environmental health analyses. The second approach honors the spatial support (size, shape and orientation) of the data. Using traditional regression models and a spatially-varying coefficient regression model, we show that different linkage methods can lead to different inference. We describe key ideas pertaining to the support of spatial data that are often ignored in many analyses of environmental health data and present a general analytical approach to change-of-support problems.
机译:正在创建一项全国环境公共卫生追踪计划,以监控环境对人类健康的影响。这项工作以及与环境和健康结果相关的许多其他努力,很大程度上取决于现有数据集的综合;为此目的正在生成的新数据很少。通常,已经针对不同的地理或空间单位收集了可用于此类合成的数据,这些单位的任何集合都可能与目标单位不同。在本文中,我们比较并对比了可用于地理信息系统中以链接来自不同来源的空间数据的两种方法。第一种方法适用于单位面积的形心,通常用于环境健康分析。第二种方法尊重数据的空间支持(大小,形状和方向)。使用传统回归模型和空间变化系数回归模型,我们证明了不同的链接方法可以导致不同的推断。我们描述了与空间数据的支持有关的关键思想,这些思想在许多环境健康数据分析中经常被忽略,并提出了解决支持变化问题的通用分析方法。

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