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首页> 外文期刊>Cartography and geographic information science >Evaluating data stability in aggregation structures across spatial scales: revisiting the modifiable areal unit problem
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Evaluating data stability in aggregation structures across spatial scales: revisiting the modifiable areal unit problem

机译:评估跨空间规模的聚集结构中的数据稳定性:重新讨论可修改的面积单位问题

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摘要

Socioeconomic and health analysts commonly rely on areally aggregated data, in part because government regulations on confidentiality prohibit data release at the individual level. Analytical results from areally aggregated data, however, are sensitive to the modifiable areal unit problem (MAUP). Levels of aggregation as well as the arbitrary and modifiable sizes, shapes, and arrangements of zones affect the validity and reliability of findings from analyses of areally aggregated data. MAUP, long acknowledged, remains unresolved. We present an exploratory spatial data analytical approach (ESDA) to understand the scalar effects of MAUP. To characterize relationships between data aggregation structures and spatial scales, we develop a method for statistically and visually exploring the local indicators of spatial association (LISA) exhibited between a variable and itself across varying levels of aggregation. We demonstrate our approach by analyzing the across-scale relationships of aggregated 2010 median income for the State of Pennsylvania and 2005-2009 cancer diagnosis rates for the State of New York between county-tract, tract-block group, and county-block group level US census designated enumeration units. This method for understanding the relationship between MAUP and spatial scale provides guidance to researchers in selecting the most appropriate scales to aggregate, analyze, and represent data for problem-specific analyses.
机译:社会经济和健康分析人员通常依赖按区域汇总的数据,部分原因是政府的保密规定禁止在个人级别发布数据。但是,面积汇总数据的分析结果对可修改的面积单位问题(MAUP)敏感。聚合的级别以及区域的任意和可修改的大小,形状和排列会影响对区域聚合数据进行分析得出的结论的有效性和可靠性。长期以来公认的MAUP仍未解决。我们提出一种探索性的空间数据分析方法(ESDA),以了解MAUP的标量效应。为了表征数据聚合结构与空间尺度之间的关系,我们开发了一种统计和可视化探索变量在不同聚合水平之间自身的空间关联局部指标(LISA)的方法。我们通过分析县域,区级组和县级组之间的宾夕法尼亚州2010年总收入中位数与纽约州2005-2009年癌症诊断率的跨尺度关系来证明我们的方法美国人口普查指定的枚举单位。这种理解MAUP和空间尺度之间关系的方法为研究人员选择最合适的尺度以汇总,分析和表示用于特定问题分析的数据提供了指导。

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