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Bayesian bivariate survival analysis using the power variance function copula

机译:使用幂方差函数copula的贝叶斯二元生存分析

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Copula models have become increasingly popular for modelling the dependence structure in multivariate survival data. The two-parameter Archimedean family of Power Variance Function (PVF) copulas includes the Clayton, Positive Stable (Gumbel) and Inverse Gaussian copulas as special or limiting cases, thus offers a unified approach to fitting these important copulas. Two-stage frequentist procedures for estimating the marginal distributions and the PVF copula have been suggested by Andersen (Lifetime Data Anal 11:333-350, 2005), Massonnet et al. (J Stat Plann Inference 139(11):3865-3877, 2009) and Prenen et al. (J R Stat Soc Ser B 79(2):483-505, 2017) which first estimate the marginal distributions and conditional on these in a second step to estimate the PVF copula parameters. Here we explore an one-stage Bayesian approach that simultaneously estimates the marginal and the PVF copula parameters. For the marginal distributions, we consider both parametric as well as semiparametric models. We propose a new method to simulate uniform pairs with PVF dependence structure based on conditional sampling for copulas and on numerical approximation to solve a target equation. In a simulation study, small sample properties of the Bayesian estimators are explored. We illustrate the usefulness of the methodology using data on times to appendectomy for adult twins in the Australian NH&MRC Twin registry. Parameters of the marginal distributions and the PVF copula are simultaneously estimated in a parametric as well as a semiparametric approach where the marginal distributions are modelled using Weibull and piecewise exponential distributions, respectively.
机译:Copula模型在建模多变量生存数据中的依存结构方面已变得越来越流行。两参数Archimedean幂方差函数(PVF)copulas系列包括Clayton,Positive Stable(Gumbel)和Inverse Gauss copulas作为特殊情况或极限情况,因此提供了一种统一的方法来拟合这些重要copulas。 Andersen(Lifetime Data Anal 11:333-350,2005),Massonnet等人提出了两阶段的频繁性程序来估计边缘分布和PVF copula。 (J Stat Plann Inference 139(11):3865-3877,2009)和Prenen等。 (J R Stat Soc Ser B 79(2):483-505,2017),它首先估计了边际分布,并在第二步中以这些为条件来估计PVF copula参数。在这里,我们探索了一种同时估计边际和PVF copula参数的贝叶斯方法。对于边际分布,我们同时考虑参数模型和半参数模型。我们提出了一种新方法,该方法基于对系动词的条件采样和数值逼近来求解目标方程,从而模拟具有PVF依赖结构的均匀对。在模拟研究中,探索了贝叶斯估计量的小样本属性。我们用澳大利亚NH&MRC Twin注册表中成年双胞胎的阑尾切除术时间数据说明了该方法的有效性。在参数和半参数方法中同时估计边际分布和PVF copula的参数,其中分别使用Weibull和分段指数分布对边际分布进行建模。

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