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Bivariate lifetime modelling using copula functions in presence of mixture and non-mixture cure fraction models, censored data and covariates

机译:在存在混合和非混合固化分数模型,审查数据和协变量的情况下使用copula函数进行双变量寿命建模

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In this paper, we introduce bivariate lifetime models derived from copula functions considering two copula functions, the Farlie Gumbel Morgenstern (FGM) commonly used to model very weak linear dependences and the Gumbel-Barnett copula which models very weak non necessarily linear dependences. Considering the presence of cure fractions for both lifetimes, censored data and covariates, we use standard MCMC (Markov Chain Monte Carlo) methods to get a Bayesian analysis for the proposed models. This new modelling approach gives a great flexibility of fit for bivariate data, since we could assume any existing parametric marginal lifetime distribution for the bivariate lifetimes as standard Weibull, log-normal, gamma, generalized gamma, generalized Weibull or generalized F distributions. An example, considering a medical data set is introduced to illustrate the proposed methodology.
机译:在本文中,我们介绍了考虑到两个copula函数的copula函数衍生的双变量寿命模型,即通常用于建模非常弱的线性依赖的Farlie Gumbel Morgenstern(FGM)和用于建模非常弱的非必要线性依赖的Gumbel-Barnett copula。考虑到生命周期,审查数据和协变量均存在治愈分数,我们使用标准MCMC(马尔可夫链蒙特卡洛)方法对所提出的模型进行贝叶斯分析。这种新的建模方法为双变量数据的拟合提供了极大的灵活性,因为我们可以假定双变量寿命的任何现有参数化边际寿命分布为标准的威布尔,对数正态,伽玛,广义伽玛,广义威布尔或广义F分布。引入一个考虑医疗数据集的示例来说明所提出的方法。

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