Advances in remote sensing and machine learning enable increasingly accurate, inexpensive, and timely estimation of poverty and malnutrition indicators to guide development and humanitarian agencies’ programming. However, state of the art models often rely on proprietary data and/or deep or transfer learning methods whose underlying mechanics may be challenging to interpret. We demonstrate how interpretable random forest models can produce estimates of a set of (potentially correlated) malnutrition and poverty prevalence measures using free, open access, regularly updated, georeferenced data. We demonstrate two use cases: contemporaneous prediction, which might be used for poverty mapping, geographic targeting, or monitoring and evaluation ...
BACKGROUND: In order to further identify the needed interventions for continued poverty reduction in...
Background In order to further identify the needed interventions for continued poverty reduction in ...
Recent advances in artificial intelligence and deep machine learning have created a step change in h...
Spatially explicit and reliable data on poverty is critical for both policy makers and researchers. ...
Poverty statistics are conventionally compiled using data from socioeconomic surveys. This study exa...
More than 330 million people are still living in extreme poverty in Africa. Timely, accurate, and sp...
The lack of reliable data in developing countries is a major obstacle to sustainable development, fo...
Percentages of acute malnutrition continue to be unsettlingly high in developing countries, while co...
101 pagesThis paper develops a machine learning approach to estimate internationally-and-intertempor...
Abstract: As the universe finds it challenging to define poverty, the world bank views poverty as an...
Estimating economic and developmental parameters such as poverty levels of a region from satellite i...
Master of ScienceDepartment of Computer ScienceWilliam H. HsuThis project focuses on a prediction ta...
The global population of malnourished children has been declining for the past 30 years; however the...
There is increasing interest in leveraging Earth Observation (EO) and geospatial data to predict and...
Tracking poverty is predicated on the availability of comparable consumption data and reliable price...
BACKGROUND: In order to further identify the needed interventions for continued poverty reduction in...
Background In order to further identify the needed interventions for continued poverty reduction in ...
Recent advances in artificial intelligence and deep machine learning have created a step change in h...
Spatially explicit and reliable data on poverty is critical for both policy makers and researchers. ...
Poverty statistics are conventionally compiled using data from socioeconomic surveys. This study exa...
More than 330 million people are still living in extreme poverty in Africa. Timely, accurate, and sp...
The lack of reliable data in developing countries is a major obstacle to sustainable development, fo...
Percentages of acute malnutrition continue to be unsettlingly high in developing countries, while co...
101 pagesThis paper develops a machine learning approach to estimate internationally-and-intertempor...
Abstract: As the universe finds it challenging to define poverty, the world bank views poverty as an...
Estimating economic and developmental parameters such as poverty levels of a region from satellite i...
Master of ScienceDepartment of Computer ScienceWilliam H. HsuThis project focuses on a prediction ta...
The global population of malnourished children has been declining for the past 30 years; however the...
There is increasing interest in leveraging Earth Observation (EO) and geospatial data to predict and...
Tracking poverty is predicated on the availability of comparable consumption data and reliable price...
BACKGROUND: In order to further identify the needed interventions for continued poverty reduction in...
Background In order to further identify the needed interventions for continued poverty reduction in ...
Recent advances in artificial intelligence and deep machine learning have created a step change in h...