8 - The Impact of Short Message Services (SMS) Weather Forecasts on Cost, Yield and Income in Maize Production: Evidence from a Pilot Randomised Controlled Trial in Bembèrèkè, North Benin
R. Yegbemey, Aline M. Aloukoutou, Ghislain B. D. Aïhounton
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引用次数: 0
Abstract
In this study we analyse the impact of weather forecasts provided to smallholder maize farmers through mobile phone short message service on self-reported labour costs, crop yield and income. We conducted a pilot field experiment, involving 331 randomly selected eligible farmers in six villages. Randomisation was done at the village level. We used three regression specifications to estimate the impacts: Ordinary Least Squares (OLS), Generalised Estimating Equations (GEE) with a small sample correction and Randomisation Inference (RI). We found that the treatment and control groups were well balanced. Farmers in the treatment group recorded lower labour costs but higher crop yield and income levels. Both the direction and the magnitude of the impact estimates were consistent across the three regression specifications, but significant with the RI model only (for labour costs and yield) or the RI and GEE models (for income). Weather forecasts can have an impact on smallholder farmers’ labour, yield and income. These findings are strong evidence of the possibility of using weather-related information and mobile phones to build smallholder farmers’ resilience to climate variability. Yet more research is required to build a solid evidence base to inform agricultural policies.
Rosaine N. Yegbemey, Laboratoire d’Analyse et de Recherches sur les Dynamiques Economiques et Sociales (LARDES), Faculté d’Agronomie, Université de Parakou, Bénin. Email: ynerice@gmail.com; rosaine.yegbemey@fa-up.bj
Aline M. Aloukoutou, Bureau de Recherche et de Développement en Agriculture (Breda-ONG). Email: alma_aline@yahoo.com
Ghislain B. D. Aïhounton, Laboratoire d’Analyseet de Recherches sur les Dynamiques Economiques et Sociales (LARDES), Faculté d’Agronomie, Université de Parakou, Bénin. Email: aihountong@gmail.com
期刊介绍:
Africa Development (ISSN 0850 3907) is the quarterly bilingual journal of CODESRIA published since 1976. It is a social science journal whose major focus is on issues which are central to the development of society. Its principal objective is to provide a forum for the exchange of ideas among African scholars from a variety of intellectual persuasions and various disciplines. The journal also encourages other contributors working on Africa or those undertaking comparative analysis of developing world issues. Africa Development welcomes contributions which cut across disciplinary boundaries. Articles with a narrow focus and incomprehensible to people outside their discipline are unlikely to be accepted.