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Multiple Imputation of Multilevel Missing Data: An Introduction to the R Package pan

机译:多级缺失数据的多重插补:R Package pan简介

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The treatment of missing data can be difficult in multilevel research because state-of-the-art procedures such as multiple imputation (MI) may require advanced statistical knowledge or a high degree of familiarity with certain statistical software. In the missing data literature, pan has been recommended for MI of multilevel data. In this article, we provide an introduction to MI of multilevel missing data using the R package pan, and we discuss its possibilities and limitations in accommodating typical questions in multilevel research. To make pan more accessible to applied researchers, we make use of the mitml package, which provides a user-friendly interface to the pan package and several tools for managing and analyzing multiply imputed data sets. We illustrate the use of pan and mitml with two empirical examples that represent common applications of multilevel models, and we discuss how these procedures may be used in conjunction with other software.
机译:在多级研究中,处理丢失的数据可能很困难,因为诸如多重插补(MI)等最新程序可能需要高级统计知识或对某些统计软件的高度熟悉。在丢失的数据文献中,建议将pan用于多级数据的MI。在本文中,我们使用R程序包平移框介绍了多级丢失数据的MI,并讨论了它在适应多级研究中的典型问题时的可能性和局限性。为了使平底锅更容易为应用研究人员所用,我们使用了mitml包,该包为平底锅包提供了用户友好的界面,并提供了一些工具来管理和分析多重插补数据集。我们用两个表示多层次模型的常见应用的经验示例说明了pan和mitml的用法,并讨论了如何将这些过程与其他软件结合使用。

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