Richard Wamalwa Wanzala , Nyankomo Marwa , Elizabeth Nanziri Lwanga
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The paper espouses the DEA Malmquist index to estimate the efficiency of coffee productivity for participating and non-participating coffee farmers in the credit program. The empirical results disclose that participating farmers had the highest geomean for productivity change (152 %), efficiency change (40.5 %), technical change (53.2 %) and scale efficiency (40.5 %). Bayesian Modelling Average was used to assess determinants of coffee productivity. Bayesian Modelling Average (BMA) was used to assess determinants of coffee productivity. The findings from BMA analysis indicated that variety, education, extension visits and crop system had a positive impact on coffee productivity. Gender and age of farmer had a negative impact on coffee productivity. Thus, these insights from the empirical work would be instrumental in providing policy directions in terms of agricultural lending and crafting policies aimed at enhancing the efficiency of coffee productivity.</p></div>","PeriodicalId":101285,"journal":{"name":"World Development Sustainability","volume":"5 ","pages":"Article 100166"},"PeriodicalIF":0.0000,"publicationDate":"2024-06-22","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S2772655X24000442/pdfft?md5=ee0892bb0abcc770e0977b0c47db9716&pid=1-s2.0-S2772655X24000442-main.pdf","citationCount":"0","resultStr":"{\"title\":\"Impact of agricultural credit on coffee productivity in Kenya\",\"authors\":\"Richard Wamalwa Wanzala , Nyankomo Marwa , Elizabeth Nanziri Lwanga\",\"doi\":\"10.1016/j.wds.2024.100166\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>Historically, agricultural credit programs have been used as a policy instrument to improve agricultural productivity and livelihoods of smallholder farmers. The effectiveness of such credit programs has been widely deliberated with an opaque unanimity being reached since yield is stochastic. Therefore, this study examines the impact of agricultural credit provided by the Government of Kenya as an intervention to boost coffee productivity. Over the years, there has been little – if any – in-depth analysis that has been dedicated to establishing the impact of this agricultural credit on coffee productivity. This study surveyed 174 smallholder coffee farmers (participants and non-participants in the credit program) in Kiambu County in Kenya between 2015 and 2019. The paper espouses the DEA Malmquist index to estimate the efficiency of coffee productivity for participating and non-participating coffee farmers in the credit program. The empirical results disclose that participating farmers had the highest geomean for productivity change (152 %), efficiency change (40.5 %), technical change (53.2 %) and scale efficiency (40.5 %). Bayesian Modelling Average was used to assess determinants of coffee productivity. Bayesian Modelling Average (BMA) was used to assess determinants of coffee productivity. The findings from BMA analysis indicated that variety, education, extension visits and crop system had a positive impact on coffee productivity. Gender and age of farmer had a negative impact on coffee productivity. 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引用次数: 0
摘要
从历史上看,农业信贷计划一直被用作提高农业生产力和改善小农生计的政策工具。由于产量具有随机性,因此此类信贷计划的有效性一直受到广泛讨论,但达成的一致意见并不透明。因此,本研究探讨了肯尼亚政府提供的农业信贷对提高咖啡生产率的影响。多年来,专门用于确定农业信贷对咖啡生产率影响的深入分析即使有,也是少之又少。本研究在 2015 年至 2019 年期间调查了肯尼亚基安布县的 174 名小农咖啡种植者(信贷计划的参与者和非参与者)。本文采用 DEA Malmquist 指数来估算参与和未参与信贷计划的咖啡种植农的咖啡生产效率。实证结果表明,参与计划的农户在生产率变化(152%)、效率变化(40.5%)、技术变化(53.2%)和规模效率(40.5%)方面的平均值最高。贝叶斯平均模型用于评估咖啡生产率的决定因素。贝叶斯平均模型(BMA)用于评估咖啡生产率的决定因素。贝叶斯平均模型分析结果表明,品种、教育、推广访问和作物系统对咖啡生产率有积极影响。农民的性别和年龄对咖啡生产率有负面影响。因此,实证研究的这些见解将有助于在农业贷款方面提供政策指导,并有助于制定旨在提高咖啡生产效率的政策。
Impact of agricultural credit on coffee productivity in Kenya
Historically, agricultural credit programs have been used as a policy instrument to improve agricultural productivity and livelihoods of smallholder farmers. The effectiveness of such credit programs has been widely deliberated with an opaque unanimity being reached since yield is stochastic. Therefore, this study examines the impact of agricultural credit provided by the Government of Kenya as an intervention to boost coffee productivity. Over the years, there has been little – if any – in-depth analysis that has been dedicated to establishing the impact of this agricultural credit on coffee productivity. This study surveyed 174 smallholder coffee farmers (participants and non-participants in the credit program) in Kiambu County in Kenya between 2015 and 2019. The paper espouses the DEA Malmquist index to estimate the efficiency of coffee productivity for participating and non-participating coffee farmers in the credit program. The empirical results disclose that participating farmers had the highest geomean for productivity change (152 %), efficiency change (40.5 %), technical change (53.2 %) and scale efficiency (40.5 %). Bayesian Modelling Average was used to assess determinants of coffee productivity. Bayesian Modelling Average (BMA) was used to assess determinants of coffee productivity. The findings from BMA analysis indicated that variety, education, extension visits and crop system had a positive impact on coffee productivity. Gender and age of farmer had a negative impact on coffee productivity. Thus, these insights from the empirical work would be instrumental in providing policy directions in terms of agricultural lending and crafting policies aimed at enhancing the efficiency of coffee productivity.