在混合线性规划中实现累积前景理论的近似——在考虑作物保险的农场规模生物经济模型中的应用

IF 0.7 4区 经济学 Q4 AGRICULTURAL ECONOMICS & POLICY
W. Britz
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引用次数: 0

摘要

许多实证研究发现,累积前景理论(CPT)在描述风险行为方面优于预期效用方法,现在文献也为欧洲农民提供了与CPT相关的参数估计。CPT结合了效用函数的两个部分,一个是凸的,喜欢风险的损失部分,一个是凹的,厌恶风险的收益部分,并根据它们的累积概率为收益分配主观权重。到目前为止,还没有将CPT实现到约束优化问题中,例如,允许在农场规模规划模型中模拟CPT下的风险管理。为了缩小这一差距,我们建议将基于整数变量的收益内生排序与使用SOS2(类型2的特殊有序集)变量的值函数的分段线性逼近相结合。需要SOS2变量来处理效用函数的损失段的凸性。整数排序根据它们的累积概率分配权重,它要求所有的支付都是等可能的。在农场规模上,用进化的生物经济模型模拟假设作物保险产品变体的最佳吸收水平,可以证明这一概念。该模型考虑了种植计划的调整,并允许部分保险覆盖,这与现有的研究相反,这些研究评估了作物保险在固定作物选择上的吸收情况,并将覆盖范围描述为是或否的决定。发现该方法的逼近误差小得可以忽略不计,与风险中立优化相比,其数值负担仍然可以接受。所提出的近似方法是相当普遍的,适用于任何效用函数的收益值增加,并且不要求其可微性。它也可以在没有概率加权的情况下应用。实证应用强调,当在CPT下考虑降低风险的策略(这里是作物保险)时,该方法会产生预期的行为。受保险面积通常随着罢工水平的提高而增加,罢工发生的频率越高,但承保的作物损失越少,保险产品的成本也越低。将作物保险作为一种风险管理策略与其他措施(如调整种植份额)相互作用。这强调了一种方法的有用性,该方法允许在CPT下优化农场规模的相互作用风险管理战略,同时考虑到资源和其他相关限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementing an Approximation of Cumulative Prospect Theory into Mixed Linear Programming – an Application to Bio-Economic Modelling at Farm-Scale Considering Crop Insurance
Many empirical studies have found Cumulative Prospect Theory (CPT) superior in depicting risk behavior compared to the expected utility approach and literature now offers also CPT related parameter estimates for European farmers. CPT combines two segments of utility functions, a convex, risk loving one for losses and a concave, risk averse one for gains, and assigns subjective weights to the pay-offs according to their cumulative probabilities. So far, no implementation of CPT into constrained optimization problems exists, allowing for instance, the simulation of risk management under CPT in farm-scale programming models. To close this gap, we propose to combine endogenous sorting of the pay-offs based on integer variables with a piece-wise linear approximation of the value function using SOS2 (Special Ordered Sets of Type 2) variables. The SOS2 variables are required to deal with the convexity of the loss segment of the utility function. The integer sorting assigns the weights to the pay-offs according to their cumulative probabilities, it requires that all pay-offs are equally likely. Simulating optimal uptake levels of variants of a hypothetical crop insurance product with an evolved bio-economic model at farm-scale serves a proof of concept. The model considers adjustments in the cropping plan and allows for partial insurance coverage, in opposite to existing studies which evaluate the uptake of crop insurance at fixed crop choices and depict coverage as a yes-no decision. The approximation error of the approach is found as negligible small and the numerical burden compared to optimization under risk neutrality as still acceptable. The proposed approximation approach is quite general and applicable for any utility function increasing in the pay-off value and does not require its differentiability. It can also be applied without probability weighting. The empirical application underlines that the approach generates the expected behavior when a risk reducing strategy, here crop insurance, is considered under CPT. Insured acreage generally increases with higher strike levels where more frequently occurring but lower crop damages are covered, and with reduced cost of the insurance products. Using crop insurance as a risk management strategy is found to interact with other measures such as adjustments in cropping shares. This underlines the usefulness of an approach which allows to optimize interacting risk management strategies at farm-scale under CPT, considering resource and other relevant constraints.
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来源期刊
German Journal of Agricultural Economics
German Journal of Agricultural Economics AGRICULTURAL ECONOMICS & POLICY-
CiteScore
1.60
自引率
20.00%
发文量
0
期刊介绍: The GJAE publishes a broad range of theoretical, applied and policy-related articles. It aims for a balanced coverage of economic issues within agricultural and food production, demand and trade, rural development, and sustainable and efficient resource use as well as specific German or European issues. The GJAE also welcomes review articles.
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