Food security is commonly measured by means of surveys, requiring substantial time and budget. Open data can possibly serve as a cost-effective alternative to predict food security. In this paper a method is proposed that uses open data related to food insecurity drivers to predict food security in Ethiopia at the subnational level. The method is based on an ordinal classification approach with a random forest as underlying algorithm. The model turned out to have an accuracy of approximately 90%. Although using an ordinal approach increases performance, a negative side-effect is that the model struggled to predict records with the label ‘stressed’ as a target. The basis of this effect lays in how probabilities for classes ranked in the midd...
AbstractEgypt is facing a problem of food insecurity combined with poverty especially in rural Upper...
The importance of early adaptation to reduce the impact of recognized risks has been underlined in r...
Food security indicators used in practice are static in nature, thereby foregoing the key dimension ...
Food insecurity is a growing concern due to man-made conflicts, climate change, and economic downtur...
Food insecurity is a growing concern due to man-made conflicts, climate change, and economic downtur...
International audienceIdentifying food insecurity situations timely and accurately is a complex chal...
International audienceAfter many years of decline, hunger in Africa is growing again. This represent...
The lack of a “gold standard ” to determine and predict household food insecurity is well documented...
Motivated by the deterioration in global food security conditions, this paper develops a parsimoniou...
Household food security is a major issue in developing countries like Pakistan. Despite significant ...
Recent advances in food insecurity classification have made analytical approaches to predict and inf...
Timely and accurate agricultural impact assessments for droughts are critical for designing appropri...
Recent advances in food insecurity classification have made analytical approaches to predict and inf...
Background. Big data and data analysis methods and models are important tools in food security (FS) ...
Advances in remote sensing and machine learning enable increasingly accurate, inexpensive, and timel...
AbstractEgypt is facing a problem of food insecurity combined with poverty especially in rural Upper...
The importance of early adaptation to reduce the impact of recognized risks has been underlined in r...
Food security indicators used in practice are static in nature, thereby foregoing the key dimension ...
Food insecurity is a growing concern due to man-made conflicts, climate change, and economic downtur...
Food insecurity is a growing concern due to man-made conflicts, climate change, and economic downtur...
International audienceIdentifying food insecurity situations timely and accurately is a complex chal...
International audienceAfter many years of decline, hunger in Africa is growing again. This represent...
The lack of a “gold standard ” to determine and predict household food insecurity is well documented...
Motivated by the deterioration in global food security conditions, this paper develops a parsimoniou...
Household food security is a major issue in developing countries like Pakistan. Despite significant ...
Recent advances in food insecurity classification have made analytical approaches to predict and inf...
Timely and accurate agricultural impact assessments for droughts are critical for designing appropri...
Recent advances in food insecurity classification have made analytical approaches to predict and inf...
Background. Big data and data analysis methods and models are important tools in food security (FS) ...
Advances in remote sensing and machine learning enable increasingly accurate, inexpensive, and timel...
AbstractEgypt is facing a problem of food insecurity combined with poverty especially in rural Upper...
The importance of early adaptation to reduce the impact of recognized risks has been underlined in r...
Food security indicators used in practice are static in nature, thereby foregoing the key dimension ...