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RETRACTED ARTICLE: Premium rate making of jujube revenue insurance in Xinjiang Aksu Region based on the mixed Copula-stochastic optimization model

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This article was retracted on 26 March 2024

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Abstract

Scientific and reasonable premium rate is the premise to guarantee the high-quality development of agricultural insurance, while unscientific premium rate is the important reason for adverse selection and insufficient use of financial funds in the development of agricultural insurance. Using the method of leading indicators and cluster analysis, this paper have regionalized the planting risk of jujube at the county level in Aksu Region of Xinjiang, China. The mixed Copula-stochastic optimization model have been used to determine the premium rate of jujube revenue insurance in different planting risk areas. Under the 100% guarantee level, the amount of revenue insurance for jujube in low, medium, higher and highest risk areas are 28,026.72 yuan/ha, 25,969.49 yuan/ha, 29,149.02 yuan/ha and 12,256.68 yuan/ha, respectively. The gross rate are 12.79%, 15.17%, 47.99% and 12.65% respectively, and the premium are 3585.93 yuan/ha, 3939.84 yuan/ha, 13,988.87 yuan/ha and 1550.44 yuan/ha respectively. In addition to the highest-risk area due to low insurance amount resulting in lower rates and premiums, the rates and premiums of the other three risk areas are consistent with the effect of their risk levels. In this paper, we propose a new pricing method of crop revenue insurance, which has a good theoretical significance for improving the credibility of crop revenue insurance pricing results, and has an important practical significance for changing the "unified" mode of current policy insurance reward and subsidy scheme of forestry and fruit industry in Xinjiang.

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Acknowledgements

This study was funded by First-class Undergraduate Major of Tarim University (Applied Statistics, No. YLZYXJ202211), and Tarim University Innovation and Entrepreneurship Training Program for College Students (Research on the Determination of Cotton Revenue Insurance Rate in Southern Xinjiang Based on Copula Function, No. 2022159).

Funding

This study was funded by First-class Undergraduate Major of Tarim University (Applied Statistics, No. YLZYXJ202211), and Tarim University Innovation and Entrepreneurship Training Program for College Students (Research on the Determination of Cotton Revenue Insurance Rate in Southern Xinjiang Based on Copula Function, No. 2022159).

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Li-Mei Qi: Conceptualization, Data Curation, Software, Methodology, Formal Analysis, Writing-Original Draft. Hao-Jie Zhu: Software, Formal Analysis, Visualization. Xiao-Zhe Geng: Data Curation, Visualization. Lei Fang: Conceptualization, Writing-Review & Editing.

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Correspondence to Lei Fang.

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This article has been retracted. Please see the retraction notice for more detail: https://doi.org/10.1007/s10878-024-01133-x"

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Qi, LM., Zhu, HJ., Geng, XZ. et al. RETRACTED ARTICLE: Premium rate making of jujube revenue insurance in Xinjiang Aksu Region based on the mixed Copula-stochastic optimization model. J Comb Optim 45, 91 (2023). https://doi.org/10.1007/s10878-023-01015-8

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