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Mapping uncertain geographical attributes: incorporating robustness into choropleth classification design

机译:映射不确定的地理属性:将鲁棒性纳入摩尔永型分类设计

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摘要

Choropleth mapping provides a simple but effective visual presentation of geographical data. Traditional choropleth mapping methods assume that data to be displayed are certain. This may not be true for many real-world problems. For example, attributes generated based on surveys may contain sampling and non-sampling error, and results generated using statistical inferences often come with a certain level of uncertainty. In recent years, several studies have incorporated uncertain geographical attributes into choropleth mapping with a primary focus on identifying the most homogeneous classes. However, no studies have yet accounted for the possibility that an areal unit might be placed in a wrong class due to data uncertainty. This paper addresses this issue by proposing a robustness measure and incorporating it into the optimal design of choropleth maps. In particular, this study proposes a discretization method to solve the new optimization problem along with a novel theoretical bound to evaluate solution quality. The new approach is applied to map the American Community Survey data. Test results suggest a tradeoff between within-class homogeneity and robustness. The study provides an important perspective on addressing data uncertainty in choropleth map design and offers a new approach for spatial analysts and decision-makers to incorporate robustness into the mapmaking process.
机译:Choropleth映射提供了地理数据的简单但有效的视觉介绍。传统的Choropleth映射方法假设要显示的数据是确定的。对于许多真实世界问题来说,这可能不是真的。例如,基于调查产生的属性可能包含采样和非采样误差,并且使用统计推断产生的结果通常具有一定程度的不确定性。近年来,若干研究已经将不确定的地理属性纳入合唱族映射,主要重点是识别最均匀的课程。然而,由于数据不确定性,没有任何研究可能会占据可能置于错误的课程中的可能性。本文通过提出稳健性措施并将其纳入摩尔普利片地图的最佳设计来解决此问题。特别是,本研究提出了一种离散化方法来解决新的优化问题以及评估溶液质量的新颖理论。新方法适用于映射美国社区调查数据。测试结果表明,在课堂内同质性和鲁棒性之间的权衡。该研究提供了关于在芝麻型地图设计中解决数据不确定性的重要视角,为空间分析师和决策者提供了一种新方法,将鲁棒性纳入地图制作过程中。

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