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Can agricultural credit scoring for microfinance institutions be implemented and improved by weather data?

Ulf Römer and Oliver Musshoff

Agricultural Finance Review, 2017, vol. 78, issue 1, 83-97

Abstract: Purpose - In recent years, the application of credit scoring in urban microfinance institutions (MFIs) became popular, while rural MFIs, which mainly lend to agricultural clients, are hesitating to adopt credit scoring. The purpose of this paper is to explore whether microfinance credit scoring models are suitable for agricultural clients, and if such models can be improved for agricultural clients by accounting for precipitation. Design/methodology/approach - This study merges two data sets: 24,219 loan and client observations provided by the AccèsBanque Madagascar and daily precipitation data made available by CelsiusPro. An in- and out-of-sample splitting separates model building from model testing. Logistic regression is employed for the scoring models. Findings - The credit scoring models perform equally well for agricultural and non-agricultural clients. Hence, credit scoring can be applied to the agricultural sector in microfinance. However, the prediction accuracy does not increase with the inclusion of precipitation in the agricultural model. Therefore, simple correlation analysis between weather events and loan repayment is insufficient for forecasting future repayment behavior. Research limitations/implications - The results should be verified in different countries and climate contexts to enhance the robustness. Social implications - By applying scoring models to agricultural clients as well, all clients can benefit from an improved risk assessment (e.g. faster decision making). Originality/value - To the best of the authors’ knowledge, this is the first study investigating the potential of microfinance credit scoring for agricultural clients in general and for Madagascar in particular. Furthermore, this is the first study that incorporates a weather variable into a scoring model.

Keywords: Microfinance; Agricultural credit; Precipitation; Credit scoring (search for similar items in EconPapers)
Date: 2017
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Citations: View citations in EconPapers (2)

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Working Paper: Can agricultural credit scoring for microfinance institutions be implemented and improved by weather data? (2017) Downloads
Working Paper: Can agricultural credit scoring for microfinance institutions be implemented and improved by weather data? (2017) Downloads
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Persistent link: https://EconPapers.repec.org/RePEc:eme:afrpps:afr-11-2016-0082

DOI: 10.1108/AFR-11-2016-0082

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