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Multiple imputation for ordinal longitudinal data with monotone missing data patterns

机译:具有单调缺失数据模式的序数纵向数据的多重插补

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摘要

Missing data often complicate the analysis of scientific data. Multiple imputation is a general purpose technique for analysis of datasets with missing values. The approach is applicable to a variety of missing data patterns but often complicated by some restrictions like the type of variables to be imputed and the mechanism underlying the missing data. In this paper, the authors compare the performance of two multiple imputation methods, namely fully conditional specification and multivariate normal imputation in the presence of ordinal outcomes with monotone missing data patterns. Through a simulation study and an empirical example, the authors show that the two methods are indeed comparable meaning any of the two may be used when faced with scenarios, at least, as the ones presented here.
机译:数据丢失通常会使科学数据的分析复杂化。多重插补是分析具有缺失值的数据集的通用技术。该方法适用于各种丢失的数据模式,但通常会因某些限制而复杂化,例如要估算的变量的类型以及丢失数据的基础机制。在本文中,作者比较了在有单调缺失数据模式的有序结果存在下,两种完全插补方法的性能,即完全条件指定和多元正态插补。通过仿真研究和经验示例,作者表明这两种方法确实具有可比性,这意味着至少在面对场景时可以使用这两种方法中的任何一种。

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