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A robust imputation method for missing responses and covariates in sample selection models

机译:样本选择模型中缺少响应和协变量的鲁棒归因方法

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摘要

Sample selection arises when the outcome of interest is partially observed in a study. Although sophisticated statistical methods in the parametric and non-parametric framework have been proposed to solve this problem, it is yet unclear how to deal with selectively missing covariate data using simple multiple imputation techniques, especially in the absence of exclusion restrictions and deviation from normality. Motivated by the 2003-2004 NHANES data, where previous authors have studied the effect of socio-economic status on blood pressure with missing data on income variable, we proposed the use of a robust imputation technique based on the selection-t sample selection model. The imputation method, which is developed within the frequentist framework, is compared with competing alternatives in a simulation study. The results indicate that the robust alternative is not susceptible to the absence of exclusion restrictions - a property inherited from the parent selection-t model - and performs better than models based on the normal assumption even when the data is generated from the normal distribution. Applications to missing outcome and covariate data further corroborate the robustness properties of the proposed method. We implemented the proposed approach within the MICE environment in R Statistical Software.
机译:当在研究中部分观察到目标结果时,便会出现样本选择。尽管已提出在参数和非参数框架中使用复杂的统计方法来解决此问题,但仍不清楚如何使用简单的多重插补技术来处理选择性缺失的协变量数据,特别是在没有排除限制和偏离正态性的情况下。基于2003年至2004年NHANES数据的启发,以前的作者研究了社会经济状况对血压的影响以及收入变量的缺失数据,我们提出了基于选择t样本选择模型的稳健插补技术。在常识性框架内开发的归因方法在模拟研究中与竞争性替代方法进行了比较。结果表明,健壮的替代方法不易受到排除限制的影响(排他性是从父选择-t模型继承的属性),并且即使基于正态分布生成数据,其性能也要比基于正态假设的模型更好。缺少结果和协变量数据的应用进一步证实了所提出方法的鲁棒性。我们在R Statistics软件的MICE环境中实施了建议的方法。

著录项

  • 作者

    Ogundimu, EO; Collins, GS;

  • 作者单位
  • 年度 2017
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  • 原文格式 PDF
  • 正文语种 eng
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