Machine learning can guide food security efforts when primary data are not available
- PMID: 37118143
- DOI: 10.1038/s43016-022-00587-8
Machine learning can guide food security efforts when primary data are not available
Abstract
Estimating how many people are food insecure and where they are is of fundamental importance for governments and humanitarian organizations to make informed and timely decisions on relevant policies and programmes. In this study, we propose a machine learning approach to predict the prevalence of people with insufficient food consumption and of people using crisis or above-crisis food-based coping when primary data are not available. Making use of a unique global dataset, the proposed models can explain up to 81% of the variation in insufficient food consumption and up to 73% of the variation in crisis or above food-based coping levels. We also show that the proposed models can nowcast the food security situation in near real time and propose a method to identify which variables are driving the changes observed in predicted trends-which is key to make predictions serviceable to decision-makers.
© 2022. The Author(s), under exclusive licence to Springer Nature Limited.
References
-
- Food Security Analysis (World Food Programme, 2022); https://www.wfp.org/food-security-analysis
-
- Blumenstock, J., Cadamuro, G. & On, R. Predicting poverty and wealth from mobile phone metadata. Science 350, 1073–1076 (2015). - DOI
-
- Jean, N. et al. Combining satellite imagery and machine learning to predict poverty. Science 353, 790–794 (2016). - DOI
-
- Steele, J. E. et al. Mapping poverty using mobile phone and satellite data. J. R. Soc. Interface 14, 20160690 (2017). - DOI
-
- Pokhriyal, N. & Jacques, D. C. Combining disparate data sources for improved poverty prediction and mapping. Proc. Natl Acad. Sci. USA 114, E9783–E9792 (2017). - DOI
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