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The use of copulas in explainingcrop yield dependence structures for use in geographic diversification

机译:copulas在解释作物产量依赖性结构以用于地理多样化中的用途

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Purpose - What copulas are, their estimation, and use is illustrated using a geographical diversification example. To accomplish this, dependencies between county-level yields are calculated for non-irrigated wheat, upland cotton, and sorghum using Pearson linear correlation and Kendall's tau. The use of Kendall's tau allows the implementation of copulas to estimate the dependency between county-level yields. The paper aims to discuss these issues.Design/methodology/approach - Four parametric copulas, Gaussian, Frank, Clayton, and Gumbel, are used to estimate Kendall's tau. These four estimates of Kendall's tau are compared to Pearson's linear correlation, a more typical measure of dependence. Using this information, functions are estimated to determine the relationships between dependencies and changes in geographic and climate data. Findings - The effect on county-level crop yields based on changes of geographical and climate variables differedamong the different dependency measures among the three different crops. Implementing alternative dependency measures changed the statistical significance and the signs of the coefficients in the sorghum and cotton dependence functions. Copula-based elasticities are consistently less than the linear correlation elasticities for wheat and cotton. For sorghum, however, the copula-based elasticities are generally larger. The results indicate that one should not take the issue of measuring dependence as atrivial matter.Originality/value - This research not only extends the current literature on geographical diversification by taking a more detailed examination of factors impacting yield dependence, but also extends the copula literature by comparing estimation resultsusing linear correlation and copula-based rank correlation.
机译:目的-使用地理多样化示例说明了系动词是什么,它们的估计和用途。为此,使用Pearson线性相关和Kendall's tau计算了非灌溉小麦,陆地棉和高粱的县级产量之间的相关性。肯德尔tau的使用允许使用copulas来估计县级产量之间的依赖性。本文旨在讨论这些问题。设计/方法/方法-使用四个参数系,高斯,弗兰克,克莱顿和古贝尔,估计肯德尔的tau。将肯德尔tau的这四个估计值与皮尔森的线性相关性(一种比较典型的依赖性度量)进行比较。使用此信息,可以估算功能以确定相关性与地理和气候数据变化之间的关系。研究结果-基于地理和气候变量变化对县级农作物产量的影响在三种不同农作物之间的不同依赖措施之间有所不同。实施替代性依赖措施改变了高粱和棉花依赖函数的统计意义以及系数的符号。基于Copula的弹性始终小于小麦和棉花的线性相关弹性。但是,对于高粱,基于系的弹性通常较大。结果表明,不应将依赖作为衡量问题。原始性/价值-这项研究不仅通过对影响产量依赖的因素进行更详细的研究来扩展当前关于地理多样化的文献,而且还扩展了copula文献。通过使用线性相关和基于copula的秩相关来比较估计结果。

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