Exploratory Bivariate and Multivariate Geovisualizations of a Social Vulnerability Index

Georgianna Strode, V. Mesev, S. Bleisch, K. Ziewitz, F. Reed, John D. Morgan
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引用次数: 5

Abstract

In the United States, the Centers for Disease Control and Prevention (CDC) is the national agency that conducts and supports public health research and practice. Among the CDC’s many achievements is the development of a social vulnerability index (SVI) to aid planners and emergency responders when identifying vulnerable segments of the population, especially during natural hazard events. The index includes an overall social vulnerability ranking as well as four individual themes: socioeconomic, household composition & disability, ethnicity & language, and housing & transportation. This makes the SVI dataset multivariate, but it is typically viewed via maps that show one theme at a time. This paper explores a suite of cartographic techniques that can represent the SVI beyond the univariate view. Specifically, we recommend three techniques: (1) bivariate mapping to illustrate overall vulnerability and population density, (2) multivariate mapping using cartographic glyphs to disaggregate levels of the four vulnerability themes, and (3) visual analytics using Euler diagrams to depict overlap between the vulnerability themes. The CDC’s SVI, and by extension, vulnerability indices in other countries, can be viewed in a variety of cartographic forms that illustrate the location of vulnerable groups of society. Viewing data from various perspectives can facilitate the understanding and analysis of the growing amount and complexity of data.
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探索性社会脆弱性指数的二元和多元地理可视化
在美国,疾病控制与预防中心(CDC)是开展和支持公共卫生研究和实践的国家机构。疾病控制与预防中心的许多成就之一是制定了社会脆弱性指数(SVI),以帮助规划者和应急人员识别人口中的弱势群体,特别是在自然灾害事件期间。该指数包括总体社会脆弱性排名以及四个主题:社会经济、家庭组成和残疾、种族和语言以及住房和交通。这使得SVI数据集是多变量的,但通常通过一次显示一个主题的地图来查看。本文探索了一套可以在单变量视图之外表示SVI的制图技术。具体而言,我们建议使用三种技术:(1)双变量映射来说明总体脆弱性和人口密度,(2)使用制图符号来分解四个脆弱性主题的级别的多变量映射,以及(3)使用欧拉图来描述脆弱性主题之间的重叠的视觉分析。疾病控制与预防中心的SVI,以及其他国家的脆弱性指数,可以用各种地图形式来查看,以说明社会弱势群体的位置。从不同的角度查看数据有助于理解和分析不断增长的数据量和复杂性。
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来源期刊
Journal of the Brazilian Computer Society
Journal of the Brazilian Computer Society Computer Science-Computer Science (all)
CiteScore
2.40
自引率
0.00%
发文量
2
期刊介绍: JBCS is a formal quarterly publication of the Brazilian Computer Society. It is a peer-reviewed international journal which aims to serve as a forum to disseminate innovative research in all fields of computer science and related subjects. Theoretical, practical and experimental papers reporting original research contributions are welcome, as well as high quality survey papers. The journal is open to contributions in all computer science topics, computer systems development or in formal and theoretical aspects of computing, as the list of topics below is not exhaustive. Contributions will be considered for publication in JBCS if they have not been published previously and are not under consideration for publication elsewhere.
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