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Identifying Aberrant Data in Structural Equation Models With IRLS-ADF

机译:使用IRLS-ADF识别结构方程模型中的异常数据

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摘要

In structural equation models, outliers could result in inaccurate parameter estimates and misleading fit statistics when using traditional methods. To robustly estimate structural equation models, iteratively reweighted least squares (IRLS; Yuan & Bentler, 2000) has been proposed, but not thoroughly examined. We explore the large-sample properties of IRLS and its effect on parameter recovery, model fit, and aberrant data identification. A parametric bootstrap technique is proposed to determine the tuning parameters of IRLS, which results in improved Type I error rates in aberrant data identification, for data sets generated from homogenous populations. Scenarios concerning (a) simulated data, (b) contaminated data, and (c) a real data set are studied. Results indicate good parameter recovery, model fit, and aberrant data identification when noisy observations are drawn from a real data set, but lackluster parameter recovery and identification of aberrant data when the noise is parametrically structured. Practical implications and further research are discussed.
机译:在结构方程模型中,离群值可能会导致使用传统方法时参数估计不准确并导致拟合统计数据产生误导。为了稳健地估计结构方程模型,已经提出了迭代地加权最小二乘(IRLS; Yuan&Bentler,2000),但是没有进行彻底的研究。我们探讨了IRLS的大样本属性及其对参数恢复,模型拟合和异常数据识别的影响。提出了一种参数自举技术来确定IRLS的调整参数,从而针对从同质总体生成的数据集,提高了异常数据识别中的I型错误率。研究了有关(a)模拟数据,(b)污染数据和(c)真实数据集的方案。结果表明,当从真实数据集中获得嘈杂的观察结果时,参数恢复良好,模型拟合良好,并且可以识别出异常数据,但是当噪声被参数化构造时,参数恢复和异常数据的识别将变得乏味。讨论了实际意义和进一步的研究。

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