非随机数据序号缺失的多重插补

IF 1.4 4区 数学 Q2 STATISTICS & PROBABILITY Asta-Advances in Statistical Analysis Pub Date : 2022-08-22 DOI:10.1007/s10182-022-00461-9
Angelina Hammon
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引用次数: 0

摘要

我们介绍了一种基于选择模型的估算方法,该方法可用于全条件规范(FCS)框架内的多重估算(MI),用于估算非随机缺失(MNAR)的不完整序数变量。因此,我们将以往涉及二进制单层次和多层次数据的工作推广到了序数变量。我们在估算算法的基础上,采用了带有样本选择功能的有序概率模型。应用的模型包括两个共同建模的等式,第一个等式描述数据缺失机制,第二个等式指定需要估算的变量。此外,通过在两个方程中加入随机截距项,我们还开发了一个适用于分层数据的版本。为了拟合这个多层次估算模型,我们使用了正交技术。两项模拟研究验证了我们的单层次和多层次估算方法的整体良好性能。此外,我们还利用国家教育面板研究(NEPS)的数据,将其应用于教育科学中的一个常见研究课题,并进行了简短的敏感性分析,从而展示了该方法对经验数据的适用性。我们的方法可在 R 软件包 mice 中使用,因此易于访问和应用。
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Multiple imputation of ordinal missing not at random data

We introduce a selection model-based imputation approach to be used within the Fully Conditional Specification (FCS) framework for the Multiple Imputation (MI) of incomplete ordinal variables that are supposed to be Missing Not at Random (MNAR). Thereby, we generalise previous work on this topic which involved binary single-level and multilevel data to ordinal variables. We apply an ordered probit model with sample selection as base of our imputation algorithm. The applied model involves two equations that are modelled jointly where the first one describes the missing-data mechanism and the second one specifies the variable to be imputed. In addition, we develop a version for hierarchical data by incorporating random intercept terms in both equations. To fit this multilevel imputation model we use quadrature techniques. Two simulation studies validate the overall good performance of our single-level and multilevel imputation methods. In addition, we show its applicability to empirical data by applying it to a common research topic in educational science using data of the National Educational Panel Study (NEPS) and conducting a short sensitivity analysis. Our approach is designed to be used within the R software package mice which makes it easy to access and apply.

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来源期刊
Asta-Advances in Statistical Analysis
Asta-Advances in Statistical Analysis 数学-统计学与概率论
CiteScore
2.20
自引率
14.30%
发文量
39
审稿时长
>12 weeks
期刊介绍: AStA - Advances in Statistical Analysis, a journal of the German Statistical Society, is published quarterly and presents original contributions on statistical methods and applications and review articles.
期刊最新文献
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