Effects of performing R-factor analysis of observed variables based on population models comprising R- and Q-factors were investigated. It was noted that estimating a model comprising R- and Q-factors has to face loading indeterminacy beyond rotational indeterminacy. Although R-factor analysis of data based on a population model comprising R- and Q-factors is nevertheless possible, this may lead to model error. Accordingly, even in the population, the resulting R-factor loadings are not necessarily close estimates of the original population R-factor loadings. It was shown in a simulation study that large Q-factor variance induces an increase of the variation of R-factor loading estimates beyond chance level. The results indicate that performing R-factor analysis with data based on a population model comprising R- and Q-factors may result in substantial loading bias. Tests of the multivariate kurtosis of observed variables are proposed as an indicator of possible Q-factor variance in observed variables as a prerequisite for R-factor analysis.
翻译:对基于由R-和Q-因素组成的人口模型的观察变量进行R-因素分析的效果进行了调查,注意到对由R-和Q-因素组成的人口模型进行估计,发现在对R-因素和Q-因素组成的人口模型进行数据分析时,除了旋转不确定之外,还必须面对不确定性的负荷模型,尽管根据由R-因素和Q-因素组成的人口模型对数据进行R-因素分析是可能的,这可能导致模型错误,因此,即使对人口而言,由此产生的R-因素装载并不一定是原始人口R-因素装载的近似估计,在一项模拟研究中显示,大型的Q-因素差异导致R-因素装载估计的变异超过概率水平,结果显示,根据由R-和Q-因素组成的人口模型进行的数据进行R-因素分析可能会造成重大的负荷偏差。