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A Third Moment Adjusted Test Statistic for Small Sample Factor Analysis

机译:一个三阶矩调整检验统计量的小样本因子分析

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摘要

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.
机译:适应性测试在因子分析中的良好是基于测试统计是渐近的Chi-Square的假设;但是,即使在人口中的因素和错误通常分布因素和错误,这种属性也可能不会持有小样本。诸如布朗的渐近分布方法和SATORRA Bentler的平均缩放统计的鲁棒方法是在因素和错误的非正常性的推定下制定的。本文在群体中分布在群体中的情况和错误通常在群体中分布时发现新的应用程序,但由于观察到的指标中的采样误差,所获得的测试统计的偏差仍然很高。提出了SATORRA Bentler统计数据的延伸,这不仅缩放了平均值,而且还基于所获得的测试统计量的歪曲来调整自由度,以便在小样本下改善其鲁棒性。一个简单的仿真研究表明,第三时刻调整了统计数据的统计数据,与先前提出的方法相对于PAR,并且在非常小的样本大小下提供优越的I型错误率在适当指定的模型下。来自Mardia,Kent和Bibby对学生的数据进行了研究,这些学生在一个开放或封闭书的五个内容领域进行了测试,用于说明这一统计数据的真实表现。

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  • 作者

    Johnny Lin; Peter M. Bentler;

  • 作者单位
  • 年(卷),期 -1(47),3
  • 年度 -1
  • 页码 448–462
  • 总页数 14
  • 原文格式 PDF
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