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Are Robust Standard Errors the Best Approach for Interval Estimation With Nonnormal Data in Structural Equation Modeling?

机译:在结构方程模型建模中,稳健的标准误差是否是采用非正态数据进行区间估计的最佳方法?

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摘要

When the multivariate normality assumption is violated in structural equation modeling, a leading remedy involves estimation via normal theory maximum likelihood with robust corrections to standard errors. We propose that this approach might not be best for forming confidence intervals for quantities with sampling distributions that are slow to approach normality, or for functions of model parameters. We implement and study a robust analog to likelihood-based confidence intervals based on inverting the robust chi-square difference test of Satorra (2000). We compare robust standard errors and the robust likelihood-based approach versus resampling methods in confirmatory factor analysis (Studies 1 & 2) and mediation analysis models (Study 3) for both single parameters and functions of model parameters, and under a variety of nonnormal data generation conditions. The percentile bootstrap emerged as the method with the best calibrated coverage rates and should be preferred if resampling is possible, followed by the robust likelihood-based approach.
机译:当在结构方程模型中违反多元正态性假设时,一种领先的补救方法是通过正态理论对最大似然进行估计,并对标准误差进行鲁棒校正。我们建议,这种方法可能不是最适合形成具有接近正态性的采样分布的数量或模型参数函数的置信区间。我们基于Satorra(2000)的鲁棒卡方差检验的倒置,实现并研究了基于似然性的置信区间的鲁棒模拟。我们在单一参数和模型参数函数以及各种非正态数据下,在确定性因素分析(研究1和2)和中介分析模型(研究3)中比较了鲁棒的标准误差和鲁棒的基于似然的方法与重采样方法。生成条件。百分位数自举法是一种具有最佳校准覆盖率的方法,如果可能进行重采样,则应首选百分数自举法,然后再使用基于似然方法的可靠方法。

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