Predicting Crop Losses using Machine Learning

Predicting Crop Losses using Machine Learning

A new study co-authored by James M. Warner from IFPRI, Predicting high-magnitude, low-frequency crop losses using machine learning: an application to cereal crops in Ethiopia, proposed a data fusion method combining remotely sensed data with agricultural survey data using machine learning algorithms to improve the accuracy and resolution of crop loss predictions.