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Poverty Mapping (Small-Area Estimation)×Spatial Poverty Mapping×
ГалузьDevelopment StudiesDevelopment Studies
РодинаProcess / pipelineProcess / pipeline
Рік появи20032007
Автор методуChris Elbers, Jean O. Lanjouw & Peter LanjouwWorld Bank poverty-mapping programme; Bedi, Coudouel & Simler
ТипCensus-survey small-area poverty estimation methodSpatial-statistical and GIS method for analysing poverty distribution
Основоположне джерелоElbers, C., Lanjouw, J. O., & Lanjouw, P. (2003). Micro-Level Estimation of Poverty and Inequality. Econometrica, 71(1), 355-364. DOI ↗Henderson, J. V., Storeygard, A., & Weil, D. N. (2012). Measuring Economic Growth from Outer Space. American Economic Review, 102(2), 994-1028. DOI ↗
Інші назвиELL Method, Poverty Mapping, Census-Survey Poverty Estimation, Small-Area Poverty EstimationPoverty mapping, Geographic targeting, Poverty maps, Spatial poverty analysis
Пов'язані44
ПідсумокELL poverty mapping, named after Chris Elbers, Jean Lanjouw, and Peter Lanjouw, is a small-area estimation method that produces poverty and inequality estimates for geographic units far smaller than a household survey can support on its own. It combines two data sources: a detailed household survey that measures consumption but covers too few households per locality, and a population census that covers everyone but does not measure consumption. The method estimates a model of consumption on variables common to both, imputes consumption into the census, and simulates to generate poverty estimates — with statistically valid standard errors — for districts, communes, or even villages, which are then drawn as poverty maps.Spatial poverty mapping visualises and analyses the geographic distribution of poverty using geographic information systems and spatial statistics, turning poverty estimates into maps that reveal where the poor live at fine spatial scales. It combines small-area poverty estimates with spatial covariates — remote-sensing data, night-time lights, accessibility, and terrain — examines spatial patterns and autocorrelation, and supports the geographic targeting of resources. Consolidated through the World Bank programme documented by Bedi, Coudouel, and Simler and energised by data such as the satellite night-lights series analysed by Henderson, Storeygard, and Weil, it has become a standard tool for evidence-based geographic targeting.
ScholarGateНабір даних
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  2. 2 Джерела
  3. PUBLISHED
  1. v1
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ScholarGateПорівняння методів: Poverty Mapping (Small-Area Estimation) · Spatial Poverty Mapping. Отримано 2026-06-24 з https://scholargate.app/uk/compare