Exploring the relationship between willingness to participate in insurance and bank loan approval for coffee farmers in Dak Lak Province: A Bayesian Model Averaging approach

Thang Le-Dinh
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Abstract

This study has employed Bayesian Model Averaging (BMA) to identify the most suitable model for assessing the eligibility of Vietnamese coffee farmers for bank loans, effectively avoiding overfitting and ensuring that only the most crucial variables were considered in the analysis. Findings from the study indicate that factors such as ethnicity, labor, yield, land ownership, and willingness to participate (WTP) in coffee insurance significantly influenced the farmers' eligibility for bank loans. Moreover, the study suggests that banks and insurance companies should also take into account additional factors, such as socio-economic context, household size and composition, land ownership, and risk-sharing programs, to enhance access to credit. With this valuable information, banks can forge partnerships with insurance companies to craft highly effective loan programs and insurance products tailored to Vietnamese farmers' unique needs. The simplicity, practicality, and strong predictive ability of the model chosen by BMA make it a valuable tool for guiding policy decisions.
探索达乐省咖啡种植农的参保意愿与银行贷款审批之间的关系:贝叶斯模型平均法
本研究采用贝叶斯平均模型(BMA)来确定最合适的模型来评估越南咖啡农获得银行贷款的资格,有效地避免了过拟合,并确保在分析中只考虑了最关键的变量。研究结果表明,种族、劳动力、产量、土地所有权和咖啡保险参与意愿等因素显著影响农民的银行贷款资格。此外,研究表明,银行和保险公司还应考虑其他因素,如社会经济背景、家庭规模和组成、土地所有权和风险分担计划,以增加获得信贷的机会。有了这些有价值的信息,银行可以与保险公司建立合作伙伴关系,根据越南农民的独特需求制定高效的贷款计划和保险产品。BMA选择的模型简单、实用、预测能力强,是指导决策的重要工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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