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首页> 外文期刊>Structural equation modeling >On Enhancing Plausibility of the Missing at Random Assumption in Incomplete Data Analyses via Evaluation of Response-Auxiliary Variable Correlations
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On Enhancing Plausibility of the Missing at Random Assumption in Incomplete Data Analyses via Evaluation of Response-Auxiliary Variable Correlations

机译:通过响应辅助变量相关性评估提高不完全数据分析中随机假设遗失的合理性

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摘要

A procedure for evaluating candidate auxiliary variable correlations with response variables in incomplete data sets is outlined. The method provides point and interval estimates of the outcome-residual correlations with potentially useful auxiliaries, and of the bivariate correlations of outcome(s) with the latter variables. Auxiliary variables found in this way can enhance considerably the plausibility of the popular missing at random (MAR) assumption if included in ensuing maximum likelihood analyses, or can alternatively be incorporated in imputation models for subsequent multiple imputation analyses. The approach can be particularly helpful in empirical settings where violations of the MAR assumption are suspected, as is the case in many longitudinal studies, and is illustrated with data from cognitive aging research.
机译:概述了评估不完整数据集中候选辅助变量与响应变量的相关性的过程。该方法提供了与可能有用的助剂的结果-残差相关性以及结果与后者变量的二元相关性的点和区间估计。如果以此方式发现的辅助变量包含在随后的最大似然分析中,则可以大大提高一般随机缺失(MAR)假设的真实性,或者可以将其合并到插补模型中,以进行后续的多次插补分析。这种方法在可疑违反MAR假设的经验设置中尤其有用,这在许多纵向研究中都是如此,并以认知老化研究的数据加以说明。

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