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The Risk Early-Warning Model of Financial Operation in Family Farms Based on Back Propagation Neural Network Methods

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Abstract

In order to solve the financial management risks of rural family farms and promote the healthy development of rural finance in China, a risk early warning (REW) model of family farm financial operation is built under the back propagation neural network (BPNN) on the basis of in-depth research of rough set theory (RST) and risk assessment, prediction, and prevention theory. Then, the concept of BPNN is elaborated, and finally, RST is combined to construct a REW index system of family farms financial operation. Besides, a BPNN-based REW model of family farms financial operation is constructed, and the family farms financial operation risk indexes from the past four years are selected, which are compared with the predicted value of the model. The results show that the designed REW model can accurately predict the financial operation of family farms, and the calculating classification accuracy of the RS model is not less than 81.88%. The operation risk and profitability risk are predicted, of which the operation risk is in the safe range for a long term, but the weight of profitability risk is extremely high. Therefore, it is necessary to strengthen the profit-making risk control level of the family farmers’ financial management sharing early-warning model investigated in this study. The BPNN-based REW model of financial operation in family farms is highly feasible under the RST investigated in this study, thereby providing a theoretical basis for the research of the financial operation REW model of family farms in China.

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Acknowledgements

The finding is sponsored by the National Social Science Fund of China (Grant No. 18CGL015), China Guangdong Education Science “13th Five Year Plan” project (2020) “Stanford 2025: Practice and Research on the Flexible Talent Model of Investment and Financial Management for the Future Classroom” (Grant No. 2020GXJK507), and the Ministry of Education of Humanities and Social Science Project (Grant No. 19YJC630091).

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ZG: writing—original draft preparation; YZ: formal analysis, data curation; GG: writing—review and editing, visualization, supervision. All authors have read and agreed to the published version of the manuscript.

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Correspondence to Guojing Geng.

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Guan, Z., Zhao, Y. & Geng, G. The Risk Early-Warning Model of Financial Operation in Family Farms Based on Back Propagation Neural Network Methods. Comput Econ 60, 1221–1244 (2022). https://doi.org/10.1007/s10614-021-10134-5

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