预测越南虾保险支付意愿的机器学习方法

IF 2 3区 经济学 Q2 ECONOMICS Marine Resource Economics Pub Date : 2022-03-16 DOI:10.1086/718835
K. Nguyen, T. Nguyen, Brice M. Nguelifack, C. Jolly
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引用次数: 1

摘要

对于资源有限的农民来说,保险费预测是一个难题。计量经济学方法产生了不准确的溢价预测。本文研究了机器学习在预测保险费方面的功效。机器学习技术和支付意愿调查数据来自越南本崔、庆和、广宁和特荣省的534名农民。表现最好的模型是立体主义、随机森林和支持向量机。立体主义模型具有最高的R2和最低的均方根误差,最适合预测保费。收获数量、总成本、放养密度和参与保险计划的意愿是最高的保费预测因子。预计的保费支付因省而异。偏相关图显示了预测保费水平与选定变量之间的经济关系。模型结果表明,机器学习在预测保险费方面是有用的,并且在保险费确定方面展示了改进计量经济学技术的前景。
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Machine Learning Approaches for Predicting Willingness to Pay for Shrimp Insurance in Vietnam
Insurance premium prediction is a problem for limited-resource farmers. Econometric methods have generated inaccurate premium forecasts. This article investigates the efficacy of machine learning in predicting insurance premium. Machine learning techniques and survey data on willingness to pay were collected from 534 farmers in Ben Tre, Khanh Hoa, Quang Ninh, and Tra Vinh Provinces, Vietnam. The top-performing models were cubist, random forest, and support vector machines. The cubist model, with the highest R2 and lowest root mean square error, was the most appropriate to forecast premiums. Quantity harvested, total cost, stocking density, and willingness to participate in an insurance program were the top-ranked predictors of premium. Predicted premium payments varied by province. Partial dependence plots showed the economic relationship between predicted premium levels and selected variables. The model results demonstrate that machine learning is useful in forecasting insurance premium and exhibits promise for improving econometric techniques in premium determination.
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来源期刊
Marine Resource Economics
Marine Resource Economics 农林科学-渔业
CiteScore
4.30
自引率
10.30%
发文量
25
审稿时长
>12 weeks
期刊介绍: Marine Resource Economics (MRE) publishes creative and scholarly economic analyses of a range of issues related to natural resource use in the global marine environment. The scope of the journal includes conceptual and empirical investigations aimed at addressing real-world oceans and coastal policy problems. Examples include studies of fisheries, aquaculture, seafood marketing and trade, marine biodiversity, marine and coastal recreation, marine pollution, offshore oil and gas, seabed mining, renewable ocean energy sources, marine transportation, coastal land use and climate adaptation, and management of estuaries and watersheds.
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