Evaluating logistic regression and geographically weighted logistic regression models for predicting orange-fleshed sweet potato adoption intention in Benin

The low adoption rate of biofortified crops, like orange-fleshed sweet potatoes (OFSP), by farmers remains a major food security concern. Accurate forecasting models for OFSP adoption intention are essential for breeding and introduction projects. This study aims to (i) identify key predictors of OF...

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Main Authors: Ahoudou, I., Fassinou Hotegni, N.V., Adje, C.O., Akponikpe, T.L., Sogbohossou, D.E., Fanou Fogny, N., Assogba-Komlan , F., Moumouni-Moussa, I., Achigan-Dako, E.G.
Format: Journal Article
Language:Inglés
Published: 2025
Subjects:
Online Access:https://hdl.handle.net/10568/176212
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author Ahoudou, I.
Fassinou Hotegni, N.V.
Adje, C.O.
Akponikpe, T.L.
Sogbohossou, D.E.
Fanou Fogny, N.
Assogba-Komlan , F.
Moumouni-Moussa, I.
Achigan-Dako, E.G.
author_browse Achigan-Dako, E.G.
Adje, C.O.
Ahoudou, I.
Akponikpe, T.L.
Assogba-Komlan , F.
Fanou Fogny, N.
Fassinou Hotegni, N.V.
Moumouni-Moussa, I.
Sogbohossou, D.E.
author_facet Ahoudou, I.
Fassinou Hotegni, N.V.
Adje, C.O.
Akponikpe, T.L.
Sogbohossou, D.E.
Fanou Fogny, N.
Assogba-Komlan , F.
Moumouni-Moussa, I.
Achigan-Dako, E.G.
author_sort Ahoudou, I.
collection Repository of Agricultural Research Outputs (CGSpace)
description The low adoption rate of biofortified crops, like orange-fleshed sweet potatoes (OFSP), by farmers remains a major food security concern. Accurate forecasting models for OFSP adoption intention are essential for breeding and introduction projects. This study aims to (i) identify key predictors of OFSP adoption intention among farmers in Benin, integrating various factors, and (ii) investigate regional variations in these predictors through different modeling approaches. We used a diverse set of predictors, including social, geographical, and psychological constructs, to model adoption intention in different sweet potato production areas in Benin. Both logistic regression (LR) and geographically weighted logistic regression (GWLR) models were developed and assessed. The GWLR model significantly outperformed the LR model, achieving a validated result of 94.2%, compared to 87% for the LR model. The GWLR model accurately identified areas with medium and high adoption propensities, mainly in northern Benin, aligning closely with observed data. Driving factors showed robust spatial heterogeneities, influencing OFSP adoption intentions differently across regions, with correlations ranging from positive to negative. The GWLR model excels in elucidating the spatial nuances of diverse factors, offering a promising avenue for more reliable predictions for OFSP adoption.
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spelling CGSpace1762122025-12-08T10:11:39Z Evaluating logistic regression and geographically weighted logistic regression models for predicting orange-fleshed sweet potato adoption intention in Benin Ahoudou, I. Fassinou Hotegni, N.V. Adje, C.O. Akponikpe, T.L. Sogbohossou, D.E. Fanou Fogny, N. Assogba-Komlan , F. Moumouni-Moussa, I. Achigan-Dako, E.G. orange-fleshed sweet potatoes farmers Benin The low adoption rate of biofortified crops, like orange-fleshed sweet potatoes (OFSP), by farmers remains a major food security concern. Accurate forecasting models for OFSP adoption intention are essential for breeding and introduction projects. This study aims to (i) identify key predictors of OFSP adoption intention among farmers in Benin, integrating various factors, and (ii) investigate regional variations in these predictors through different modeling approaches. We used a diverse set of predictors, including social, geographical, and psychological constructs, to model adoption intention in different sweet potato production areas in Benin. Both logistic regression (LR) and geographically weighted logistic regression (GWLR) models were developed and assessed. The GWLR model significantly outperformed the LR model, achieving a validated result of 94.2%, compared to 87% for the LR model. The GWLR model accurately identified areas with medium and high adoption propensities, mainly in northern Benin, aligning closely with observed data. Driving factors showed robust spatial heterogeneities, influencing OFSP adoption intentions differently across regions, with correlations ranging from positive to negative. The GWLR model excels in elucidating the spatial nuances of diverse factors, offering a promising avenue for more reliable predictions for OFSP adoption. 2025-03-15 2025-08-27T09:20:32Z 2025-08-27T09:20:32Z Journal Article https://hdl.handle.net/10568/176212 en Open Access application/pdf Ahoudou, I., Fassinou Hotegni, N.V., Adjé, C.O., Akponikpè, T.L., Sogbohossou, D.E., Fanou Fogny, N., ... & Achigan-Dako, E.G. (2025). Evaluating logistic regression and geographically weighted logistic regression models for predicting orange-fleshed sweet potato adoption intention in Benin. Scientific Reports, 15(1): e8927. 1-19.
spellingShingle orange-fleshed sweet potatoes
farmers
Benin
Ahoudou, I.
Fassinou Hotegni, N.V.
Adje, C.O.
Akponikpe, T.L.
Sogbohossou, D.E.
Fanou Fogny, N.
Assogba-Komlan , F.
Moumouni-Moussa, I.
Achigan-Dako, E.G.
Evaluating logistic regression and geographically weighted logistic regression models for predicting orange-fleshed sweet potato adoption intention in Benin
title Evaluating logistic regression and geographically weighted logistic regression models for predicting orange-fleshed sweet potato adoption intention in Benin
title_full Evaluating logistic regression and geographically weighted logistic regression models for predicting orange-fleshed sweet potato adoption intention in Benin
title_fullStr Evaluating logistic regression and geographically weighted logistic regression models for predicting orange-fleshed sweet potato adoption intention in Benin
title_full_unstemmed Evaluating logistic regression and geographically weighted logistic regression models for predicting orange-fleshed sweet potato adoption intention in Benin
title_short Evaluating logistic regression and geographically weighted logistic regression models for predicting orange-fleshed sweet potato adoption intention in Benin
title_sort evaluating logistic regression and geographically weighted logistic regression models for predicting orange fleshed sweet potato adoption intention in benin
topic orange-fleshed sweet potatoes
farmers
Benin
url https://hdl.handle.net/10568/176212
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