101 pagesThis paper develops a machine learning approach to estimate internationally-and-intertemporally comparable, decomposable, structural asset poverty measures. These measures are founded in theory, link directly to official poverty lines, and are amenable to ML-based prediction using Earth Observation data. Using household survey data from Tanzania, Uganda, and Malawi, we model the relationship between household consumption expenditures and productive assets, directly linking flow-based poverty measures with asset-based structural poverty measures. The poverty measures we construct can serve as new, improved dependent variables for ML poverty prediction. We also assess whether our poverty estimates vary from readily available poverty ...
More than 330 million people are still living in extreme poverty in Africa. Timely, accurate, and sp...
Abstract: As the universe finds it challenging to define poverty, the world bank views poverty as an...
Abstract: This paper examines the performance of a particular method for predicting poverty. The met...
Master of ScienceDepartment of Computer ScienceWilliam H. HsuThis project focuses on a prediction ta...
Poverty alleviation continues to be paramount for developing countries. This necessitates the need f...
Several studies have shown conceptually that assets form a more robust basis for identifying the poo...
Many critical policy decisions, from strategic investments to the allocation of humanitarian aid, re...
Effective poverty reduction programs require careful measurement of poverty status. Several studies ...
To combat poor health and living conditions, policymakers in Africa require temporally and geographi...
Recent advances in artificial intelligence and deep machine learning have created a step change in h...
Many critical policy decisions, from strategic investments to the allocation of humanitarian aid, re...
Advances in remote sensing and machine learning enable increasingly accurate, inexpensive, and timel...
This paper investigates measures of poverty that rely on indicators of household net worth. The auth...
This article traces a methodological path for constructing a statistically and normatively validated...
Eight percent of the total world population lives in extreme poverty. The goal of this study is to c...
More than 330 million people are still living in extreme poverty in Africa. Timely, accurate, and sp...
Abstract: As the universe finds it challenging to define poverty, the world bank views poverty as an...
Abstract: This paper examines the performance of a particular method for predicting poverty. The met...
Master of ScienceDepartment of Computer ScienceWilliam H. HsuThis project focuses on a prediction ta...
Poverty alleviation continues to be paramount for developing countries. This necessitates the need f...
Several studies have shown conceptually that assets form a more robust basis for identifying the poo...
Many critical policy decisions, from strategic investments to the allocation of humanitarian aid, re...
Effective poverty reduction programs require careful measurement of poverty status. Several studies ...
To combat poor health and living conditions, policymakers in Africa require temporally and geographi...
Recent advances in artificial intelligence and deep machine learning have created a step change in h...
Many critical policy decisions, from strategic investments to the allocation of humanitarian aid, re...
Advances in remote sensing and machine learning enable increasingly accurate, inexpensive, and timel...
This paper investigates measures of poverty that rely on indicators of household net worth. The auth...
This article traces a methodological path for constructing a statistically and normatively validated...
Eight percent of the total world population lives in extreme poverty. The goal of this study is to c...
More than 330 million people are still living in extreme poverty in Africa. Timely, accurate, and sp...
Abstract: As the universe finds it challenging to define poverty, the world bank views poverty as an...
Abstract: This paper examines the performance of a particular method for predicting poverty. The met...