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首页> 外文期刊>The British journal of mathematical and statistical psychology >Analysing multitrait–multimethod data with structural equation models for ordinal variables applying the WLSMV estimator: What sample size is needed for valid results?
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Analysing multitrait–multimethod data with structural equation models for ordinal variables applying the WLSMV estimator: What sample size is needed for valid results?

机译:使用WLSMV估计量,使用结构方程模型对序数变量进行多特征多方法数据分析:有效结果需要多少样本量?

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Convergent and discriminant validity of psychological constructs can best be examined in the framework of multitrait–multimethod (MTMM) analysis. To gain information at the level of single items, MTMM models for categorical variables have to be applied. The CTC(M?1) model is presented as an example of an MTMM model for ordinal variables. Based on an empirical application of the CTC(M?1) model, a complex simulation study was conducted to examine the sample size requirements of the robust weighted least squares mean- and variance-adjusted χ2 test of model fit (WLSMV estimator) implemented in Mplus. In particular, the simulation study analysed the χ2 approximation, the parameter estimation bias, the standard error bias, and the reliability of the WLSMV estimator depending on the varying number of items per trait–method unit (ranging from 2 to 8) and varying sample sizes (250, 500, 750, and 1000 observations). The results showed that the WLSMV estimator provided a good – albeit slightly liberal – χ2 approximation and stable and reliable parameter estimates for models of reasonable complexity (2–4 items) and small sample sizes (at least 250 observations). When more complex models with 5 or more items were analysed, larger sample sizes of at least 500 observations were needed. The most complex model with 9 trait–method units and 8 items (72 observed variables) requires sample sizes of at least 1000 observations.
机译:最好在多特征多方法(MTMM)分析框架中检验心理构想的收敛性和判别性有效性。为了获得单个项目级别的信息,必须应用分类变量的MTMM模型。 CTC(M?1)模型是作为有序变量MTMM模型的示例提供的。基于CTC(M?1)模型的经验应用,进行了复杂的模拟研究,以检验在模型拟合中实施的稳健加权最小二乘均方差和经方差调整的χ2检验的样本大小要求(WLSMV估计器) Mplus。尤其是,仿真研究根据每个特征方法单元的项目数变化(范围从2到8)和样本变化,分析了χ2近似值,参数估计偏差,标准误差偏差和WLSMV估计量的可靠性。大小(250、500、750和1000个观测值)。结果表明,WLSMV估计器为合理复杂性(2-4个项目)和小样本量(至少250个观察值)的模型提供了一个很好的-尽管略微宽松-χ2近似值,以及稳定可靠的参数估计值。当分析具有5个或更多项目的更复杂模型时,需要至少500个观察值的更大样本量。具有9个特征方法单位和8个项目(72个观察变量)的最复杂模型需要至少1000个观察值的样本量。

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