上学的最后一英里:描绘发展中国家的教育沙漠

Q1 Economics, Econometrics and Finance
Daniel Rodriguez-Segura, Brian Heseung Kim
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引用次数: 6

摘要

随着高分辨率卫星图像和机器视觉算法的最新进展,关于人口的精细地理空间数据现在可以广泛获得:每公里,全世界。在本文中,我们展示了发展中国家的研究人员和政策制定者如何利用这些新数据以前所未有的规模、细节和成本效益精确识别“教育沙漠”——家庭缺乏实际教育机会的局部地区。我们展示了这些分析如何为学校建设和交通投资等教育机会倡议提供有价值的信息,并概述了各种分析扩展,以更深入地了解特定国家的学校机会状况。我们在危地马拉的背景下进行了概念验证分析,该国家历史上一直在努力获得教育机会,以证明我们提出的方法的实用性、可行性和灵活性。我们发现,绝大多数危地马拉人居住在距离一所公立小学3公里以内的地方,这表明在这种情况下,距离作为教育障碍的发生率普遍较低。然而,我们仍然确定了一些集中的人口,他们到学校的距离仍然令人望而却步,这揭示了在全国平均水平内的重要地理差异。最后,我们展示了如何使用我们开发的一个简单算法,在这些地区,即使是一小部分最佳位置的学校,也可以大大减少在这种情况下教育沙漠的发生率。我们将整个代码库向公众开放——完全免费、开源、大量文档化,并为广泛使用而设计——允许不同背景的分析人员轻松地将我们提出的分析复制到其他国家、教育水平和更广泛的公共产品中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The last mile in school access: Mapping education deserts in developing countries

With recent advances in high-resolution satellite imagery and machine vision algorithms, fine-grain geospatial data on population are now widely available: kilometer-by-kilometer, worldwide. In this paper, we showcase how researchers and policymakers in developing countries can leverage these novel data to precisely identify “education deserts” – localized areas where families lack physical access to education – at unprecedented scale, detail, and cost-effectiveness. We demonstrate how these analyses could valuably inform educational access initiatives like school construction and transportation investments, and outline a variety of analytic extensions to gain deeper insight into the state of school access across a given country. We conduct a proof-of-concept analysis in the context of Guatemala, which has historically struggled with educational access, as a demonstration of the utility, viability, and flexibility of our proposed approach. We find that the vast majority of Guatemalan population lives within 3 km of a public primary school, indicating a generally low incidence of distance as a barrier to education in that context. However, we still identify concentrated pockets of population for whom the distance to school remains prohibitive, revealing important geographic variation within the strong country-wide average. Finally, we show how even a small number of optimally-placed schools in these areas, using a simple algorithm we develop, could substantially reduce the incidence of education deserts in this context. We make our entire codebase available to the public – fully free, open-source, heavily documented, and designed for broad use – allowing analysts across contexts to easily replicate our proposed analyses for other countries, educational levels, and public goods more generally.

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来源期刊
Development Engineering
Development Engineering Economics, Econometrics and Finance-Economics, Econometrics and Finance (all)
CiteScore
4.90
自引率
0.00%
发文量
11
审稿时长
31 weeks
期刊介绍: Development Engineering: The Journal of Engineering in Economic Development (Dev Eng) is an open access, interdisciplinary journal applying engineering and economic research to the problems of poverty. Published studies must present novel research motivated by a specific global development problem. The journal serves as a bridge between engineers, economists, and other scientists involved in research on human, social, and economic development. Specific topics include: • Engineering research in response to unique constraints imposed by poverty. • Assessment of pro-poor technology solutions, including field performance, consumer adoption, and end-user impacts. • Novel technologies or tools for measuring behavioral, economic, and social outcomes in low-resource settings. • Hypothesis-generating research that explores technology markets and the role of innovation in economic development. • Lessons from the field, especially null results from field trials and technical failure analyses. • Rigorous analysis of existing development "solutions" through an engineering or economic lens. Although the journal focuses on quantitative, scientific approaches, it is intended to be suitable for a wider audience of development practitioners and policy makers, with evidence that can be used to improve decision-making. It also will be useful for engineering and applied economics faculty who conduct research or teach in "technology for development."
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