Paper by Luna Yue Huang, Solomon M. Hsiang & Marco Gonzalez-Navarro: “The rigorous evaluation of anti-poverty programs is key to the fight against global poverty. Traditional approaches rely heavily on repeated in-person field surveys to measure program effects. However, this is costly, time-consuming, and often logistically challenging. Here we provide the first evidence that we can conduct such program evaluations based solely on high-resolution satellite imagery and deep learning methods. Our application estimates changes in household welfare in a recent anti-poverty program in rural Kenya. Leveraging a large literature documenting a reliable relationship between housing quality and household wealth, we infer changes in household wealth based on satellite-derived changes in housing quality and obtain consistent results with the traditional field-survey based approach. Our approach generates inexpensive and timely insights on program effectiveness in international development programs…(More)”.
Using Satellite Imagery and Deep Learning to Evaluate the Impact of Anti-Poverty Programs
How to contribute:
Did you come across – or create – a compelling project/report/book/app at the leading edge of innovation in governance?
Share it with us at info@thelivinglib.org so that we can add it to the Collection!
About the author
Get the latest news right in you inbox
Subscribe to curated findings and actionable knowledge from The Living Library, delivered to your inbox every Friday
Related articles
citizen engagement
Making Civic Trust Less Abstract: A Framework for Measuring Trust Within Cities
Posted in June 5, 2025 by Stefaan Verhulst
artificial intelligence
The AI Policy Playbook
Posted in June 5, 2025 by Stefaan Verhulst
DATA
Europe’s dream to wean off US tech gets reality check
Posted in June 5, 2025 by Stefaan Verhulst