Navigating choices when applying multiple imputation in the presence of multi-level categorical interaction effects

Q Mathematics
Aya A. Mitani , Allison W. Kurian , Amar K. Das , Manisha Desai
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引用次数: 8

Abstract

Multiple imputation (MI) is an appealing option for handling missing data. When implementing MI, however, users need to make important decisions to obtain estimates with good statistical properties. One such decision involves the choice of imputation model–the joint modeling (JM) versus fully conditional specification (FCS) approach. Another involves the choice of method to handle interactions. These include imputing the interaction term as any other variable (active imputation), or imputing the main effects and then deriving the interaction (passive imputation). Our study investigates the best approach to perform MI in the presence of interaction effects involving two categorical variables. Such effects warrant special attention as they involve multiple correlated parameters that are handled differently under JM and FCS modeling. Through an extensive simulation study, we compared active, passive and an improved passive approach under FCS, as JM precludes passive imputation. We additionally compared JM and FCS techniques using active imputation. Performance between active and passive imputation was comparable. The improved passive approach proved superior to the other two particularly when the number of parameters corresponding to the interaction was large. JM without rounding and FCS using active imputation were also mostly comparable, with JM outperforming FCS when the number of parameters was large. In a direct comparison of JM active and FCS improved passive, the latter was the clear winner. We recommend improved passive imputation under FCS along with sensitivity analyses to handle multi-level interaction terms.

在存在多层次分类交互效应的情况下应用多重输入时的导航选择
多重输入(Multiple imputation, MI)是处理缺失数据的一种很有吸引力的选择。然而,在实现MI时,用户需要做出重要的决策,以获得具有良好统计特性的估计。其中一个决策涉及到对输入模型的选择——联合建模(JM)和完全条件规范(FCS)方法。另一个涉及处理交互的方法的选择。这些方法包括将交互项推定为任何其他变量(主动推定),或推定主要效应,然后推导交互(被动推定)。我们的研究探讨了在涉及两个分类变量的相互作用效应存在的情况下执行MI的最佳方法。这些影响需要特别注意,因为它们涉及多个相关参数,这些参数在JM和FCS建模中处理方式不同。通过广泛的仿真研究,我们比较了FCS下的主动、被动和改进的被动方法,因为JM排除了被动imputation。此外,我们比较了JM和FCS技术使用主动插入。主动和被动插补之间的性能具有可比性。改进后的被动方法优于其他两种方法,特别是当相互作用对应的参数数量较大时。不舍入的JM和使用主动插值的FCS也具有很大的可比性,当参数数量较大时,JM优于FCS。在JM主动和FCS改进被动的直接比较中,后者是明显的赢家。我们建议改进FCS下的被动归算和敏感性分析,以处理多层次的相互作用项。
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来源期刊
Statistical Methodology
Statistical Methodology STATISTICS & PROBABILITY-
CiteScore
0.59
自引率
0.00%
发文量
0
期刊介绍: Statistical Methodology aims to publish articles of high quality reflecting the varied facets of contemporary statistical theory as well as of significant applications. In addition to helping to stimulate research, the journal intends to bring about interactions among statisticians and scientists in other disciplines broadly interested in statistical methodology. The journal focuses on traditional areas such as statistical inference, multivariate analysis, design of experiments, sampling theory, regression analysis, re-sampling methods, time series, nonparametric statistics, etc., and also gives special emphasis to established as well as emerging applied areas.
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