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Robust Two-Stage Approach Outperforms Robust Full Information Maximum Likelihood With Incomplete Nonnormal Data

机译:鲁棒的两阶段方法在不完整的非正态数据的情况下胜过鲁棒的完整信息最大似然

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摘要

This article builds on the work of Savalei and Bentler (2009), who proposed and evaluated a statistically justified two-stage (TS) approach for fitting structural equation models with incomplete normally distributed data. The TS approach first obtains saturated maximum likelihood (ML) estimates of the population means and covariance matrix and then uses these saturated estimates in the complete data ML fitting function. Standard errors and test statistics are then adjusted to reflect uncertainty due to missing data. This work presents an extension of the TS methodology to nonnormal incomplete data (robust TS) and conducts an empirical evaluation of its performance relative to the full information maximum likelihood (FIML) approach with robust standard errors and a scaled chi-square statistic. The results indicate that although TS parameter estimates are slightly lower in efficiency, the TS approach performs better than FIML in terms of coverage and the rejection rate of the scaled chi-square across a wide variety of conditions. Its wide implementation and further study are encouraged.
机译:本文基于Savalei和Bentler(2009)的工作,他们提出并评估了统计上合理的两阶段(TS)方法,以拟合结构方程模型与不完整的正态分布数据。 TS方法首先获得总体均值和协方差矩阵的饱和最大似然(ML)估计,然后在完整的数据ML拟合函数中使用这些饱和估计。然后调整标准误差和测试统计信息以反映由于缺少数据而引起的不确定性。这项工作提出了将TS方法扩展到非正常不完整数据(稳健TS)的方法,并相对于具有稳健标准误差和缩放卡方统计量的全信息最大似然(FIML)方法进行了性能评估。结果表明,尽管TS参数估计的效率略低,但TS方法在覆盖范围和在各种条件下按比例缩放的卡方的拒绝率方面均优于FIML。鼓励其广泛实施和进一步研究。

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