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Copula-based regression models for a bivariate mixed discrete and continuous outcome.

机译:基于Copula的回归模型,用于双变量混合离散和连续结果。

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This paper is concerned with regression models for correlated mixed discrete and continuous outcomes constructed using copulas. Our approach entails specifying marginal regression models for the outcomes, and combining them via a copula to form a joint model. Specifically, we propose marginal regression models (e.g. generalized linear models) to link the outcomes' marginal means to covariates. To account for associations between outcomes, we adopt the Gaussian copula to indirectly specify their joint distributions. Our approach has two advantages over current methods: one, regression parameters in models for both outcomes are marginally meaningful, and two, the association is 'margin-free', in the sense that it is characterized by the copula alone. By assuming a latent variable framework to describe discrete outcomes, the copula used still uniquely determines the joint distribution. In addition, association measures between outcomes can be interpreted in the usual way. We report results of simulations concerning the bias and efficiency of two likelihood-based estimation methods for the model. Finally, we illustrate the model using data on burn injuries.
机译:本文涉及使用Copulas构建的相关混合离散和连续结果的回归模型。我们的方法需要为结果指定边缘回归模型,并通过Copula将它们组合以形成联合模型。具体而言,我们提出了边缘回归模型(例如,广义的线性模型),以将结果的边际手段联系起来对协变量。要考虑成果之​​间的协会,我们采用高斯·科姆拉间接指明其联合分布。我们的方法有两个优点,通过目前的方法:一个,两种结果模型中的回归参数都是边缘有意义的,而且两个关联是“免费”,这是它的特征在于单独的copula。通过假设潜在的变量框架来描述离散结果,使用仍然唯一地确定联合分布。此外,结果之间的关联措施可以以通常的方式解释。我们报告模拟偏差和效率的模拟效率的结果。最后,我们用燃烧伤害的数据说明了模型。

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