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Addressing Item-Level Missing Data: A Comparison of Proration and Full Information Maximum Likelihood Estimation

机译:处理项目级别的缺失数据:按比例分配和完整信息最大似然估计的比较

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摘要

Often when participants have missing scores on one or more of the items comprising a scale, researchers compute prorated scale scores by averaging the available items. Methodologists have cautioned that proration may make strict assumptions about the mean and covariance structures of the items comprising the scale (; ; ). We investigated proration empirically and found that it resulted in bias even under a missing completely at random (MCAR) mechanism. To encourage researchers to forgo proration, we describe an FIML approach to item-level missing data handling that mitigates the loss in power due to missing scale scores and utilizes the available item-level data without altering the substantive analysis. Specifically, we propose treating the scale score as missing whenever one or more of the items are missing and incorporating items as auxiliary variables. Our simulations suggest that item-level missing data handling drastically increases power relative to scale-level missing data handling. These results have important practical implications, especially when recruiting more participants is prohibitively difficult or expensive. Finally, we illustrate the proposed method with data from an online chronic pain management program.
机译:通常,当参与者在组成一个量表的一个或多个项目上缺少分数时,研究人员通过平均可用项目来计算按比例分配的分数。方法学家警告说,按比例分配可能会对构成量表(;;)的项目的均值和协方差结构做出严格的假设。我们根据经验调查了比例分配,发现即使在完全随机缺失(MCAR)机制下,它也会导致偏差。为了鼓励研究人员放弃按比例分配的费用,我们描述了一种FIML方法来处理项目级别的缺失数据,该方法可以减轻由于缺少规模评分而导致的功率损失,并在不更改实质性分析的情况下利用可用的项目级别数据。具体来说,我们建议每当一项或多项内容缺失时就将量表分数视为缺失,并将其作为辅助变量。我们的仿真表明,相对于规模级别的缺失数据处理,项目级别的缺失数据处理大大提高了功能。这些结果具有重要的实际意义,尤其是在招募更多参与者非常困难或昂贵时。最后,我们用在线慢性疼痛管理程序中的数据说明了所提出的方法。

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