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Copula, marginal distributions and model selection: a Bayesian note

机译:Copula,边际分布和模型选择:贝叶斯笔记

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Copula functions and marginal distributions are combined to produce multivariate distributions. We show advantages of estimating all parameters of these models using the Bayesian approach, which can be done with standard Markov chain Monte Carlo algorithms. Deviance-based model selection criteria are also discussed when applied to copula models since they are invariant under monotone increasing transformations of the marginals. We focus on the deviance information criterion. The joint estimation takes into account all dependence structure of the parameters' posterior distributions in our chosen model selection criteria. Two Monte Carlo studies are conducted to show that model identification improves when the model parameters are jointly estimated. We study the Bayesian estimation of all unknown quantities at once considering bivariate copula functions and three known marginal distributions.
机译:Copula函数和边际分布相结合以产生多元分布。我们展示了使用贝叶斯方法估计这些模型的所有参数的优势,这可以通过标准的马尔可夫链蒙特卡洛算法来完成。基于偏差的模型选择标准在应用于copula模型时也将进行讨论,因为它们在边缘的单调递增变换下是不变的。我们专注于偏差信息标准。在我们选择的模型选择标准中,联合估计考虑了参数后验分布的所有依赖性结构。进行了两项蒙特卡洛研究,以表明当共同估计模型参数时,模型识别会提高。我们同时考虑了双变量copula函数和三个已知的边际分布,研究了所有未知量的贝叶斯估计。

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