Skip to content

Data and code for replicating the AEPP paper "Machine learning for food security: Principles for transparency and usability"

Notifications You must be signed in to change notification settings

zhou100/FoodSecurityPrediction

Repository files navigation

Machine learning for food security: Principles for transparency and usability

Abstract: Machine learning (ML) holds potential to predict hunger crises before they occur. Yet, ML models embed crucial choices that affect their utility. We develop a prototype model to predict food insecurity across three countries in sub-Saharan Africa. Readily available data on prices, assets and weather all influence our model predictions. Our model obtains 55-84% accuracy, substantially outperforming a logit and ML models using only time and location. We highlight key principles for transparency and demonstrate how modeling choices between recall and accuracy can be tailored to policy-maker needs. Our work provides a path for future modeling efforts in this area.

Keywords: food insecurity, machine learning, early warning, Sub-Saharan Africa, famine

About

Data and code for replicating the AEPP paper "Machine learning for food security: Principles for transparency and usability"

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published