首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Doubly robust estimates for binary longitudinal data analysis with missing response and missing covariates.
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Doubly robust estimates for binary longitudinal data analysis with missing response and missing covariates.

机译:二进制纵向数据分析的双稳健估计,缺少响应和协变量。

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Longitudinal studies often feature incomplete response and covariate data. Likelihood-based methods such as the expectation-maximization algorithm give consistent estimators for model parameters when data are missing at random (MAR) provided that the response model and the missing covariate model are correctly specified; however, we do not need to specify the missing data mechanism. An alternative method is the weighted estimating equation, which gives consistent estimators if the missing data and response models are correctly specified; however, we do not need to specify the distribution of the covariates that have missing values. In this article, we develop a doubly robust estimation method for longitudinal data with missing response and missing covariate when data are MAR. This method is appealing in that it can provide consistent estimators if either the missing data model or the missing covariate model is correctly specified. Simulation studies demonstrate that this method performs well in a variety of situations.
机译:纵向研究通常以响应不完整和协变量数据为特征。如果正确指定了响应模型和缺失的协变量模型,那么当数据随机丢失(MAR)时,基于期望的算法(例如期望最大化算法)会为模型参数提供一致的估计。但是,我们不需要指定丢失的数据机制。另一种方法是加权估计方程式,如果正确指定了缺失的数据和响应模型,则可以给出一致的估计器。但是,我们不需要指定缺少值的协变量的分布。在本文中,我们针对数据缺失时缺少响应和协变量的纵向数据开发了一种双健壮的估计方法。此方法的吸引力在于,如果正确指定了缺失的数据模型或缺失的协变量模型,它可以提供一致的估计量。仿真研究表明,该方法在各种情况下均能很好地发挥作用。

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