作物保险发展的系统过程:在泰国实施机器学习技术的地区水稻产量保险

IF 1.5 Q3 AGRICULTURAL ECONOMICS & POLICY Agricultural Finance Review Pub Date : 2023-03-27 DOI:10.1108/afr-09-2022-0115
Krish Sethanand, Thitivadee Chaiyawat, Chupun Gowanit
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引用次数: 0

摘要

目的本文提出了一个系统的过程框架,为每个具有相关作物、气候条件个体差异的农业种植区制定合适的作物保险,包括在作物保险实践中实施的适用技术。本文还研究了采用新的保险方案来评估加入作物保险计划的意愿。设计/方法/方法通过IDDI概念框架进行作物保险开发,以说明具体的作物保险图。区域收益率保险作为一种以指数为基础的保险,具有降低基础风险、逆向选择和道德风险的优点。因此,本文旨在在省级层面上发展区域产量作物保险,重点是水稻防洪保险计划。该图展示了与所选机器学习算法相关的区域产量水稻保险的结构,该算法用于评估适用于乌汶-拉恰哈尼省Jasmine 105水稻种植的赔偿支付和保费评估。技术接受模型(TAM)用于新保险采用测试。发现该框架产生了明显的作物保险信息结构。随机森林是一种算法,它为乌汶-拉恰哈尼省水稻种植的特定收集数据提供了高精度,以评估水稻产量并计算赔偿金。TAM表明采用率很高。独创性/价值本文提出了生成适合个体农业的可行作物保险的框架,并提出了在作物保险计划的新服务中实施技术的想法。
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Systematic process for crop insurance development: area-yield rice insurance with machine learning technology implementation in Thailand
PurposeThis paper presents the systematic process framework to develop the suitable crop insurance for each agriculture farming region which has individual differences of associated crop, climate condition, including applicable technology to be implemented in crop insurance practice. This paper also studies the adoption of new insurance scheme to assess the willingness to join crop insurance program.Design/methodology/approachCrop insurance development has been performed through IDDI conceptual framework to illustrate the specific crop insurance diagram. Area-yield insurance as a type of index-based insurance advantages on reducing basis risk, adverse selection and moral hazard. This paper therefore aims to develop area-yield crop insurance, at a provincial level, focusing on rice insurance scheme for the protection of flood. The diagram demonstrates the structure of area-yield rice insurance associates with selected machine learning algorithm to evaluate indemnity payment and premium assessment applicable for Jasmine 105 rice farming in Ubon Ratchathani province. Technology acceptance model (TAM) is used for new insurance adoption testing.FindingsThe framework produces the visibly informative structure of crop insurance. Random Forest is the algorithm that gives high accuracy for specific collected data for rice farming in Ubon Ratchathani province to evaluate the rice production to calculate an indemnity payment. TAM shows that the level of adoption is high.Originality/valueThis paper originates the framework to generate the viable crop insurance that suitable to individual farming and contributes the idea of technology implementation in the new service of crop insurance scheme.
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来源期刊
Agricultural Finance Review
Agricultural Finance Review AGRICULTURAL ECONOMICS & POLICY-
CiteScore
3.70
自引率
18.80%
发文量
24
期刊介绍: Agricultural Finance Review provides a rigorous forum for the publication of theory and empirical work related solely to issues in agricultural and agribusiness finance. Contributions come from academic and industry experts across the world and address a wide range of topics including: Agricultural finance, Agricultural policy related to agricultural finance and risk issues, Agricultural lending and credit issues, Farm credit, Businesses and financial risks affecting agriculture and agribusiness, Agricultural policies affecting farm or agribusiness risks and profitability, Risk management strategies including the use of futures and options, Rural credit in developing economies, Microfinance and microcredit applied to agriculture and rural development, Financial efficiency, Agriculture insurance and reinsurance. Agricultural Finance Review is committed to research addressing (1) factors affecting or influencing the financing of agriculture and agribusiness in both developed and developing nations; (2) the broadest aspect of risk assessment and risk management strategies affecting agriculture; and (3) government policies affecting farm profitability, liquidity, and access to credit.
期刊最新文献
Multi-step commodity forecasts using deep learning Regional analysis of agricultural bank liquidity Data-driven determination of plant growth stages for improved weather index insurance design Utilizing FSA conservation loan programs to support farm conservation activities Evaluation of alternative farm safety net program combination strategies
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