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Simultaneous inference in structured additive conditional copula regression models: a unifying Bayesian approach

机译:结构加性条件copula回归模型中的同时推断:统一贝叶斯方法

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摘要

While most regression models focus on explaining distributional aspects of one single response variable alone, interest in modern statistical applications has recently shifted towards simultaneously studying multiple response variables as well as their dependence structure. A particularly useful tool for pursuing such an analysis are copula-based regression models since they enable the separation of the marginal response distributions and the dependence structure summarised in a specific copula model. However, so far copula-based regression models have mostly been relying on two-step approaches where the marginal distributions are determined first whereas the copula structure is studied in a second step after plugging in the estimated marginal distributions. Moreover, the parameters of the copula are mostly treated as a constant not related to covariates and most regression specifications for the marginals are restricted to purely linear predictors. We therefore propose simultaneous Bayesian inference for both the marginal distributions and the copula using computationally efficient Markov chain Monte Carlo simulation techniques. In addition, we replace the commonly used linear predictor by a generic structured additive predictor comprising for example nonlinear effects of continuous covariates, spatial effects or random effects and furthermore allow to make the copula parameters covariate-dependent. To facilitate Bayesian inference, we construct proposal densities for a Metropolis-Hastings algorithm relying on quadratic approximations to the full conditionals of regression coefficients avoiding manual tuning. The performance of the resulting Bayesian estimates is evaluated in simulations comparing our approach with penalised likelihood inference, studying the choice of a specific copula model based on the deviance information criterion, and comparing a simultaneous approach with a two-step procedure. Furthermore, the flexibility of Bayesian conditional copula regression models is illustrated in two applications on childhood undernutrition and macroecology.
机译:尽管大多数回归模型只关注于解释一个响应变量的分布方面,但现代统计应用的兴趣最近转向同时研究多个响应变量及其依赖结构。进行这种分析的一种特别有用的工具是基于copula的回归模型,因为它们可以分离特定copula模型中的边际响应分布和依赖性结构。然而,到目前为止,基于copula的回归模型主要依靠两步法,其中首先确定边际分布,而在插入估计的边际分布之后,在第二步研究copula结构。此外,系动词的参数大部分被视为与协变量无关的常数,并且针对边际的大多数回归指标仅限于纯线性预测变量。因此,我们使用计算效率高的马尔可夫链蒙特卡罗模拟技术为边际分布和copula提出了同步贝叶斯推断。另外,我们用通用的结构化可预测变量代替了常用的线性预测变量,该结构预测变量包括例如连续协变量的非线性效应,空间效应或随机效应,并且还允许使copula参数与协变量相关。为了便于贝叶斯推理,我们为Metropolis-Hastings算法构造了建议密度,该算法依赖于回归系数的全部条件的二次逼近,从而避免了人工调整。在模拟中评估所得贝叶斯估计的性能,将我们的方法与惩罚似然推断进行比较,研究基于偏差信息标准的特定copula模型的选择,并将同时方法与两步过程进行比较。此外,在儿童营养不良和宏观生态学的两个应用中说明了贝叶斯条件copula回归模型的灵活性。

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