Ichikawa Masanori, Konishi Sadanori
Tokyo University of Foreign Studies, Japan.
Br J Math Stat Psychol. 2008 Nov;61(Pt 2):361-78. doi: 10.1348/000711007X204198. Epub 2007 Apr 21.
In an effort to find accurate alternatives to the usual confidence intervals based on normal approximations, this paper compares four methods of generating second-order accurate confidence intervals for non-standardized and standardized communalities in exploratory factor analysis under the normality assumption. The methods to generate the intervals employ, respectively, the Cornish-Fisher expansion and the approximate bootstrap confidence (ABC), and the bootstrap-t and the bias-corrected and accelerated bootstrap (BC(a)). The former two are analytical and the latter two are numerical. Explicit expressions of the asymptotic bias and skewness of the communality estimators, used in the analytical methods, are derived. A Monte Carlo experiment reveals that the performance of central intervals based on normal approximations is a consequence of imbalance of miscoverage on the left- and right-hand sides. The second-order accurate intervals do not require symmetry around the point estimates of the usual intervals and achieve better balance, even when the sample size is not large. The behaviours of the second-order accurate intervals were similar to each other, particularly for large sample sizes, and no method performed consistently better than the others.
为了找到基于正态近似的常用置信区间的准确替代方法,本文比较了在正态性假设下探索性因子分析中为非标准化和标准化共同度生成二阶准确置信区间的四种方法。生成区间的方法分别采用Cornish-Fisher展开和近似自助置信区间(ABC),以及自助t法和偏差校正加速自助法(BC(a))。前两种是解析方法,后两种是数值方法。推导了分析方法中使用的共同度估计量的渐近偏差和偏度的显式表达式。蒙特卡罗实验表明,基于正态近似的中心区间的性能是左右两侧误覆盖不平衡的结果。二阶准确区间不需要围绕常用区间的点估计对称,即使样本量不大也能实现更好的平衡。二阶准确区间的行为彼此相似,特别是对于大样本量,没有一种方法始终比其他方法表现更好。