Paper ID: 2211.01406

Incorporating High-Frequency Weather Data into Consumption Expenditure Predictions

Anders Christensen, Joel Ferguson, Simón Ramírez Amaya

Recent efforts have been very successful in accurately mapping welfare in datasparse regions of the world using satellite imagery and other non-traditional data sources. However, the literature to date has focused on predicting a particular class of welfare measures, asset indices, which are relatively insensitive to short term fluctuations in well-being. We suggest that predicting more volatile welfare measures, such as consumption expenditure, substantially benefits from the incorporation of data sources with high temporal resolution. By incorporating daily weather data into training and prediction, we improve consumption prediction accuracy significantly compared to models that only utilize satellite imagery.

Submitted: Oct 6, 2022