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The Copula Approach to Sample Selection Modelling: An Application to the Recreational Value of Forests

机译:Copula方法选择样本模型:森林游憩价值的应用

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摘要

The sample selection model is based upon a bivariate or a multivariate structure, and distributional assumptions are in this context more severe than in univariate settings, due to the limited availability of tractable multivariate distributions. While the standard FIML estimation of the selectivity model assumes normality of the joint distribution, alternative approaches require less stringent distributional hypotheses. As shown by Smith (2003), copulas allow great flexibility also in FIML models. The copula model is very useful in situations where the applied researcher has a prior on the distributional form of the margins, since it allows separating their modelling from that of the dependence structure. In the present paper the copula approach to sample selection is first compared to the semiparametric approach and to the standard FIML, bivariate normal model, in an illustrative application on female work data. Then its performance is analysed more thoroughly in an application to Contingent Valuation data on recreational values of forests.
机译:样本选择模型基于双变量或多变量结构,在这种情况下,分布假设比单变量设置更为严格,因为可处理的多元分布的可用性有限。虽然选择性模型的标准FIML估计假设联合分布为正态,但其他方法则需要较少严格的分布假设。如Smith(2003)所示,copula在FIML模型中也具有很大的灵活性。 copula模型在应用研究人员具有边际分布形式先验的情况下非常有用,因为它允许将其建模与依赖结构的建模分开。在本文中,在女性工作数据的说明性应用中,首先将copula方法用于样本选择,并将其与半参数方法和标准FIML(双变量正态模型)进行比较。然后,将其性能应用到有关森林休闲价值的或有估值数据中,进行更彻底的分析。

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