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The Impact of Model Parameterization and Estimation Methods on Tests of Measurement Invariance With Ordered Polytomous Data

机译:模型参数化和估计方法对有序多态数据的测量不变性检验的影响

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摘要

Evaluations of measurement invariance provide essential construct validity evidence—a prerequisite for seeking meaning in psychological and educational research and ensuring fair testing procedures in high-stakes settings. However, the quality of such evidence is partly dependent on the validity of the resulting statistical conclusions. Type I or Type II errors can render measurement invariance conclusions meaningless. The present study used Monte Carlo simulation methods to compare the effects of multiple model parameterizations (linear factor model, Tobit factor model, and categorical factor model) and estimators (maximum likelihood [ML], robust maximum likelihood [MLR], and weighted least squares mean and variance-adjusted [WLSMV]) on the performance of the chi-square test for the exact-fit hypothesis and chi-square and likelihood ratio difference tests for the equal-fit hypothesis for evaluating measurement invariance with ordered polytomous data. The test statistics were examined under multiple generation conditions that varied according to the degree of metric noninvariance, the size of the sample, the magnitude of the factor loadings, and the distribution of the observed item responses. The categorical factor model with WLSMV estimation performed best for evaluating overall model fit, and the categorical factor model with ML and MLR estimation performed best for evaluating change in fit. Results from this study should be used to inform the modeling decisions of applied researchers. However, no single analysis combination can be recommended for all situations. Therefore, it is essential that researchers consider the context and purpose of their study.
机译:度量不变性的评估提供了基本的结构效度证据,这是在心理学和教育研究中寻求意义并确保在高风险环境中公平测试程序的前提。但是,此类证据的质量部分取决于所得统计结论的有效性。 I型或II型错误会使测量不变性结论毫无意义。本研究使用蒙特卡洛模拟方法比较了多个模型参数化(线性因子模型,Tobit因子模型和分类因子模型)和估计量(最大似然[ML],鲁棒最大似然[MLR]和加权最小二乘)的影响均方差校正(WLSMV))的性能,使用卡方检验进行精确拟合假设,用卡方检验和似然比差异检验进行等拟合假设,以评估有序多项数据的测量不变性。在多种生成条件下检查了测试统计数据,这些生成条件根据度量不变性的程度,样本的大小,因子加载的大小以及观察到的项目响应的分布而变化。使用WLSMV估计的分类因子模型最适合评估整体模型拟合,而使用ML和MLR估计的分类因子模型最适合评估拟合变化。这项研究的结果应用于为应用研究人员的建模决策提供依据。但是,对于所有情况都不能建议使用单个分析组合。因此,研究人员必须考虑研究的背景和目的。

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