首页> 外文期刊>Journal of international development: The journal of the development studies association >UNDERSTANDING RELATIONSHIPS BETWEEN GLOBAL HEALTH INDICATORS VIA VISUALISATION AND STATISTICAL ANALYSIS
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UNDERSTANDING RELATIONSHIPS BETWEEN GLOBAL HEALTH INDICATORS VIA VISUALISATION AND STATISTICAL ANALYSIS

机译:通过可视化和统计分析了解全球健康指标之间的关系

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摘要

Several agencies such asWorld Bank, United Nations and UNESCO are disseminating a large amount of socio-economic data at national level. Various websites such as UC Atlas, Gapminder, CIESIN and NationMaster are attempting to provide general users visualisation tools to display this data. Typical visualisation methods include line graphs, bar graphs, scatter plots, colour-coded glyphs (such as circles) and world maps. In addition to the general public, there is great interest in educational, research and public policy institutes to try to understand the relationships between these socio-economic indicators. In this paper, we juxtapose two techniques to investigate the relationships between global health indicators. The first approach employs sophisticated statistical techniques to develop a causality model between various global health indicators. The second approach, typically employed by the visualisation users of the various websites mentioned above, is to utilise a bivariate display between the health indicators in order to discover relationships between these variables. This visualisation approach is perhaps closest to a bivariate regression or correlation. Therefore, we employ these simple statistical techniques and associated visualisations as well. In this work, we analyse the two approaches using two specific examples related to health indicators. We find that the two approaches sometimes agree strengthening the conclusions or may provide different perspectives that require more careful analysis of the conclusions and need for further research.
机译:世界银行,联合国和教科文组织等一些机构正在国家一级传播大量的社会经济数据。诸如UC Atlas,Gapminder,CIESIN和NationMaster之类的各种网站都试图为普通用户提供可视化工具来显示此数据。典型的可视化方法包括折线图,条形图,散点图,颜色编码的字形(例如圆形)和世界地图。除公众之外,教育,研究和公共政策机构也非常感兴趣,以试图了解这些社会经济指标之间的关系。在本文中,我们并列了两种技术来研究全球健康指标之间的关系。第一种方法采用复杂的统计技术来建立各种全球健康指标之间的因果关系模型。通常由上述各种网站的可视化用户使用的第二种方法是利用健康指标之间的双变量显示,以发现这些变量之间的关系。这种可视化方法可能最接近二元回归或相关性。因此,我们还采用了这些简单的统计技术以及相关的可视化效果。在这项工作中,我们使用与健康指标有关的两个特定示例来分析这两种方法。我们发现这两种方法有时会同意加强结论,或者可能会提供不同的观点,需要对结论进行更仔细的分析并需要进一步的研究。

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