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Effects of Missing Data Methods in Structural Equation Modeling With Nonnormal Longitudinal Data

机译:缺失数据方法在非正态纵向数据结构方程建模中的作用

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The purpose of this study is to investigate the effects of missing data techniques in longitudinal studies under diverse conditions. A Monte Carlo simulation examined the performance of 3 missing data methods in latent growth modeling: listwise deletion (LD), maximum likelihood estimation using the expectation and maximization algorithm with a nonnormality correction (robust ML), and the pairwise asymptotically distribution-free method (pairwise ADF). The effects of 3 independent variables (sample size, missing data mechanism, and distribution shape) were investigated on convergence rate, parameter and standard error estimation, and model fit. The results favored robust ML over LD and pairwise ADF in almost all respects. The exceptions included convergence rates under the most severe nonnormality in the missing not at random (MNAR) condition and recovery of standard error estimates across sample sizes. The results also indicate that nonnormality, small sample size, MNAR, and multicollinearity might adversely affect convergence rate and the validity of statistical inferences concerning parameter estimates and model fit statistics.
机译:这项研究的目的是研究在不同条件下纵向研究中缺失数据技术的影响。蒙特卡洛模拟检查了潜在增长建模中3种缺失数据方法的性能:逐行删除(LD),使用带有非正态校正的期望和最大化算法(鲁棒ML)的最大似然估计以及成对渐近无分布方法(成对ADF)。研究了3个独立变量(样本大小,数据机制缺失和分布形状)对收敛速度,参数和标准误差估计以及模型拟合的影响。结果几乎在所有方面都比LD和成对ADF更支持健壮的ML。例外情况包括在非随机缺失(MNAR)条件下最严重的非正态性下的收敛速度,以及跨样本量的标准误差估计值的恢复。结果还表明,非正态性,小样本量,MNAR和多重共线性可能会对收敛速度以及与参数估计和模型拟合统计有关的统计推断的有效性产生不利影响。

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