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首页> 外文期刊>Journal of applied statistics >Joint regression modeling for missing categorical covariates in generalized linear models
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Joint regression modeling for missing categorical covariates in generalized linear models

机译:广义线性模型中缺少分类协变量的联合回归建模

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Missing covariates data is a common issue in generalized linear models (GLMs). A model-based procedure arising from properly specifying joint models for both the partially observed covariates and the corresponding missing indicator variables represents a sound and flexible methodology, which lends itself to maximum likelihood estimation as the likelihood function is available in computable form. In this paper, a novel model-based methodology is proposed for the regression analysis of GLMs when the partially observed covariates are categorical. Pair-copula constructions are used as graphical tools in order to facilitate the specification of the high-dimensional probability distributions of the underlying missingness components. The model parameters are estimated by maximizing the weighted loglikelihood function by using an EM algorithm. In order to compare the performance of the proposed methodology with other well-established approaches, which include complete-cases and multiple imputation, several simulation experiments of Binomial, Poisson and Normal regressions are carried out under both missing at random and non-missing at random mechanisms scenarios. The methods are illustrated by modeling data from a stage III melanoma clinical trial. The results show that the methodology is rather robust and flexible, representing a competitive alternative to traditional techniques.
机译:协变量数据的丢失是广义线性模型(GLM)中的常见问题。通过为部分观察到的协变量和相应的缺失指标变量正确指定联合模型而产生的基于模型的过程,代表了一种健全而灵活的方法,由于似然函数可以以可计算的形式使用,因此可以最大程度地估计似然。在本文中,提出了一种新颖的基于模型的方法,用于对部分观测到的协变量进行分类时的GLM回归分析。配对关系构造用作图形工具,以便于规范底层缺失成分的高维概率分布。通过使用EM算法最大化加权对数似然函数来估计模型参数。为了将所提出的方法与包括完整案例和多重插补在内的其他公认方法的性能进行比较,在随机丢失和随机丢失的情况下,进行了二项式,泊松和正态回归的几个模拟实验。机制方案。通过对来自III期黑色素瘤临床试验的数据进行建模来说明这些方法。结果表明,该方法相当健壮和灵活,代表了传统技术的竞争选择。

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