Price risk management effect on the China’s egg “Insurance + Futures” mode: an empirical analysis based on the AR-Net model

Chen Liu, Yu-heng Zhao
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引用次数: 0

Abstract

Egg prices are linked to people’s livelihoods, and layer farmers face the risk of large fluctuations. The “Insurance + Futures” mode, as one of new price risk management modes, suffers from the problems of inaccurately determining insurance price and premium rate: an approach that overcomes these problems by proposing a mode based on the autoregressive neural network(AR-Net) model is proposed. This study uses the data pertaining to China’s egg futures closing prices from November 2013 to March 2021 for analysis, a dataset of 1756 samples can be obtained from theWind database. The improved egg price risk management mode presented herein comprises three stages. Firstly, compared with the statistical models (Autoregressive model, ARIMA model, Monte Carlo simulation) and neural network model (Back propagation (BP) model, convolutional neural network (CNN) model), the AR-Net model improves the accuracy of insurance price forecast by its seasonal trend coefficients. Secondly, the AR-Net model is used for rolling forecasts of insurance price and premium rate during the insurance period. Scenario simulations predict that the new mode offers better risk management. Thirdly, the result of robustness analysis by value at risk-generalized autoregressive conditional heteroskedasticity(VaR-GARCH) model implies that the AR-Net model can improve the management of risk.
价格风险管理对中国鸡蛋“保险+期货”模式的影响——基于AR-Net模型的实证分析
鸡蛋价格与人们的生计息息相关,蛋农面临着大幅波动的风险。“保险+期货”模式作为一种新型的价格风险管理模式,存在保险价格和保险费率确定不准确的问题,提出了一种基于自回归神经网络(AR-Net)模型的模式来克服这些问题。本研究使用2013年11月至2021年3月的中国鸡蛋期货收盘价格数据进行分析,从wind数据库获得1756个样本的数据集。本文提出的改进的鸡蛋价格风险管理模式包括三个阶段。首先,与统计模型(Autoregressive模型、ARIMA模型、Monte Carlo模拟)和神经网络模型(Back propagation (BP)模型、卷积神经网络(CNN)模型)相比,AR-Net模型通过季节趋势系数提高了保险价格预测的准确性。其次,利用AR-Net模型对保险期间的保险价格和保险费率进行滚动预测。情景模拟预测,新模式提供了更好的风险管理。第三,风险值广义自回归条件异方差(VaR-GARCH)模型的稳健性分析结果表明AR-Net模型可以改善风险管理。
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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来源期刊
Kuwait Journal of Science & Engineering
Kuwait Journal of Science & Engineering MULTIDISCIPLINARY SCIENCES-
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