In recent years, conditional copulas, that allow dependence between variables to vary according to the values of one or more covariates, have attracted increasing attention. In high dimension, vine copulas offer greater flexibility compared to multivariate copulas, since they are constructed using bivariate copulas as building blocks. In this paper we present a novel inferential approach for multivariate distributions, which combines the flexibility of vine constructions with the advantages of Bayesian nonparametrics, not requiring the specification of parametric families for each pair copula. Expressing multivariate copulas using vines allows us to easily account for covariate specifications driving the dependence between response variables. More precisely, we specify the vine copula density as an infinite mixture of Gaussian copulas, defining a Dirichlet process (DP) prior on the mixing measure, and we perform posterior inference via Markov chain Monte Carlo (MCMC) sampling. Our approach is successful as for clustering as well as for density estimation. We carry out intensive simulation studies and apply the proposed approach to investigate the impact of natural disasters on financial development. Our results show that the methodology is able to capture the heterogeneity in the dataset and to reveal different behaviours of different country clusters in relation to natural disasters.
翻译:近些年来,允许不同变量之间依一种或多种共变值的不同值而产生依赖性的有条件椰子体,引起了越来越多的注意。在高维度方面,葡萄干椰子与多变椰子相比,具有更大的灵活性,因为它们是用双变椰子作为构件来制造的。在本文中,我们介绍了一种新颖的多变式分配的推断方法,它结合了葡萄构造的灵活性和巴伊西亚非参数的优点,而不需要为每对椰子规定参数家庭。使用藤碱表达多变式椰子使我们可以很容易地说明驱动反应变量之间依赖性的共变式规格。更准确地说,我们把葡萄干椰子密度作为高氏的无限混合物,在混合测量之前界定一个Drichlet进程,我们通过Markov 链 Monte Carlo(MC ) 取样来进行后推推法。我们的方法在组合和密度估计方面是成功的。我们进行了密集的模拟研究,并应用了拟议的方法来调查自然灾害对不同自然灾害的影响。我们用何种方法来显示不同的自然灾害的发生方式来显示它所揭示的特征。