Published February 6, 2025
| Version v1
Journal article
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Microlevel structural poverty estimates for southern and eastern Africa
Creators
- 1. Cornell University
- 2. Asian Development Bank
- 3. University of Chicago
Description
For many countries in the Global South traditional poverty estimates are available only infrequently and at coarse spatial resolutions, if at all. This limits decision-makers' and analysts' ability to target humanitarian and development interventions and makes it difficult to study relationships between poverty and other natural and human phenomena at finer spatial scales. Advances in Earth observation and machine learning-based methods have proven capable of generating more granular estimates of relative asset wealth indices. They have been less successful in predicting the consumption-based poverty measures most commonly used by decision-makers, those tied to national and international poverty lines. For a study area including four countries in southern and eastern Africa, we pilot a two-step approach that combines Earth observation, accessible machine learning methods, and asset-based structural poverty measurement to address this gap. This structural poverty approach to machine learning-based poverty estimation preserves the interpretability and policy-relevance of consumption-based poverty measures, while allowing us to explain 72 to 78% of cluster-level variation in a pooled model and 40 to 54% even when predicting out-of-country.
Data availability
All author generated data and code for this project are included in the replication package, available on the Zenodo repository (59). All source data utilized for this project are publicly available for noncommercial use, but may not be included directly in the replication package due to file size or permissions. Code is in R. Large datasets were accessed via and preprocessed in Google Earth Engine.Files
tennant-et-al-2025-microlevel-structural-poverty-estimates-for-southern-and-eastern-africa.pdf
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Additional details
Identifiers
- DOI
- 10.1073/pnas.2410350122
- Other
- oai:uchicago.tind.io:14516
Funding
- Cornell University