Bono Roser, Arnau Jaume, Blanca María J, Alarcón Rafael
Department of Methodology of the Behavioral Sciences, Faculty of Psychology, University of Barcelona, Passeig de la Vall d'Hebron, 171, 08035, Barcelona, Spain.
Institute for Brain, Cognition, and Behavior (IR3C), University of Barcelona, Barcelona, Spain.
Behav Res Methods. 2016 Dec;48(4):1621-1630. doi: 10.3758/s13428-015-0673-1.
In this study, we explored the accuracy of sphericity estimation and analyzed how the sphericity of covariance matrices may be affected when the latter are derived from simulated data. We analyzed the consequences that normal and nonnormal data generated from an unstructured population covariance matrix-with low (ε = .57) and high (ε = .75) sphericity-can have on the sphericity of the matrix that is fitted to these data. To this end, data were generated for four types of distributions (normal, slightly skewed, moderately skewed, and severely skewed or log-normal), four sample sizes (very small, small, medium, and large), and four values of the within-subjects factor (K = 4, 6, 8, and 10). Normal data were generated using the Cholesky decomposition of the correlation matrix, whereas the Vale-Maurelli method was used to generate nonnormal data. The results indicate the extent to which sphericity is altered by recalculating the covariance matrix on the basis of simulated data. We concluded that bias is greater with spherical covariance matrices, nonnormal distributions, and small sample sizes, and that it increases in line with the value of K. An interaction was also observed between sample size and K: With very small samples, the observed bias was greater as the value of K increased.
在本研究中,我们探讨了球形度估计的准确性,并分析了协方差矩阵从模拟数据导出时其球形度可能受到的影响。我们分析了从具有低球形度(ε = 0.57)和高球形度(ε = 0.75)的非结构化总体协方差矩阵生成的正态和非正态数据,对拟合这些数据的矩阵的球形度可能产生的影响。为此,针对四种分布类型(正态、轻微偏态、中度偏态和严重偏态或对数正态)、四种样本量(非常小、小、中、大)以及四种组内因子值(K = 4、6、8和10)生成了数据。正态数据使用相关矩阵的Cholesky分解生成,而非正态数据则使用Vale-Maurelli方法生成。结果表明了根据模拟数据重新计算协方差矩阵时球形度改变的程度。我们得出结论,对于球形协方差矩阵、非正态分布和小样本量,偏差更大,并且偏差会随着K值的增加而增大。还观察到样本量和K之间存在交互作用:对于非常小的样本,随着K值的增加,观察到的偏差更大。