Lin Johnny, Bentler Peter M
University of California, Los Angeles.
Multivariate Behav Res. 2012 Jan 1;47(3):448-462. doi: 10.1080/00273171.2012.673948. Epub 2012 Jun 15.
Goodness of fit testing in factor analysis is based on the assumption that the test statistic is asymptotically chi-square; but this property may not hold in small samples even when the factors and errors are normally distributed in the population. Robust methods such as Browne's asymptotically distribution-free method and Satorra Bentler's mean scaling statistic were developed under the presumption of non-normality in the factors and errors. This paper finds new application to the case where factors and errors are normally distributed in the population but the skewness of the obtained test statistic is still high due to sampling error in the observed indicators. An extension of Satorra Bentler's statistic is proposed that not only scales the mean but also adjusts the degrees of freedom based on the skewness of the obtained test statistic in order to improve its robustness under small samples. A simple simulation study shows that this third moment adjusted statistic asymptotically performs on par with previously proposed methods, and at a very small sample size offers superior Type I error rates under a properly specified model. Data from Mardia, Kent and Bibby's study of students tested for their ability in five content areas that were either open or closed book were used to illustrate the real-world performance of this statistic.
因子分析中的拟合优度检验基于检验统计量渐近服从卡方分布这一假设;但即便总体中的因子和误差呈正态分布,在小样本中这一性质也可能不成立。诸如布朗的渐近无分布方法以及萨托拉·本特勒的均值缩放统计量等稳健方法,是在因子和误差非正态的假定下发展起来的。本文发现该方法在总体中因子和误差呈正态分布,但由于观测指标中的抽样误差导致所获得的检验统计量的偏度仍然很高的情况下有新的应用。本文提出了萨托拉·本特勒统计量的一种扩展,它不仅对均值进行缩放,还基于所获得的检验统计量的偏度调整自由度,以提高其在小样本下的稳健性。一项简单的模拟研究表明,这种经三阶矩调整的统计量在渐近情况下与先前提出的方法表现相当,并且在样本量非常小的情况下,在模型设定正确时能提供更优的第一类错误率。来自马尔迪亚、肯特和比比关于学生在五个内容领域(开卷或闭卷)的能力测试研究的数据被用于说明该统计量在实际中的表现。