在哥伦比亚难以进入的地区利用社会制图和卫星得出的建筑物覆盖率进行人口普查后的人口估计。

IF 2.5 2区 社会学 Q1 DEMOGRAPHY
Lina Maria Sanchez-Cespedes, Douglas Ryan Leasure, Natalia Tejedor-Garavito, Glenn Harry Amaya Cruz, Gustavo Adolfo Garcia Velez, Andryu Enrique Mendoza, Yenny Andrea Marín Salazar, Thomas Esch, Andrew J Tatem, Mariana Ospina Bohórquez
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引用次数: 0

摘要

有效的政府服务有赖于准确的人口数字来分配资源。在哥伦比亚和全球范围内,偏远地区和发生武装冲突地区的人口普查工作都面临挑战。在人口普查筹备期间,哥伦比亚国家统计局举办了社会制图研讨会,由社区代表估算其所在地区的住宅和人口数量。我们重新利用了这些信息,并将其与遥感建筑物数据和其他地理空间数据相结合。为了估算建筑物数量和人口规模,我们开发了分层贝叶斯模型,使用附近的全覆盖人口普查数据进行训练,并使用 10 倍交叉验证进行评估。我们对模型进行了比较,以评估社区知识、遥感建筑物及其组合对模型拟合的相对贡献。社区模型没有偏差,但不精确;卫星模型更精确,但有偏差;而组合模型的总体精确度最高。结果再次证实了遥感建筑物数据在人口估计方面的威力,并强调了结合当地知识的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social cartography and satellite-derived building coverage for post-census population estimates in difficult-to-access regions of Colombia.

Effective government services rely on accurate population numbers to allocate resources. In Colombia and globally, census enumeration is challenging in remote regions and where armed conflict is occurring. During census preparations, the Colombian National Administrative Department of Statistics conducted social cartography workshops, where community representatives estimated numbers of dwellings and people throughout their regions. We repurposed this information, combining it with remotely sensed buildings data and other geospatial data. To estimate building counts and population sizes, we developed hierarchical Bayesian models, trained using nearby full-coverage census enumerations and assessed using 10-fold cross-validation. We compared models to assess the relative contributions of community knowledge, remotely sensed buildings, and their combination to model fit. The Community model was unbiased but imprecise; the Satellite model was more precise but biased; and the Combination model was best for overall accuracy. Results reaffirmed the power of remotely sensed buildings data for population estimation and highlighted the value of incorporating local knowledge.

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来源期刊
CiteScore
5.00
自引率
4.20%
发文量
30
期刊介绍: For over half a century, Population Studies has reported significant advances in methods of demographic analysis, conceptual and mathematical theories of demographic dynamics and behaviour, and the use of these theories and methods to extend scientific knowledge and to inform policy and practice. The Journal"s coverage of this field is comprehensive: applications in developed and developing countries; historical and contemporary studies; quantitative and qualitative studies; analytical essays and reviews. The subjects of papers range from classical concerns, such as the determinants and consequences of population change, to such topics as family demography and evolutionary and genetic influences on demographic behaviour.
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