Johannes Gutenberg University, Mainz, Germany.
Br J Math Stat Psychol. 2013 Feb;66(1):127-43. doi: 10.1111/j.2044-8317.2012.02044.x. Epub 2012 Apr 24.
We conducted a Monte Carlo study to investigate the performance of the polychoric instrumental variable estimator (PIV) in comparison to unweighted least squares (ULS) and diagonally weighted least squares (DWLS) in the estimation of a confirmatory factor analysis model with dichotomous indicators. The simulation involved 144 conditions (1,000 replications per condition) that were defined by a combination of (a) two types of latent factor models, (b) four sample sizes (100, 250, 500, 1,000), (c) three factor loadings (low, moderate, strong), (d) three levels of non-normality (normal, moderately, and extremely non-normal), and (e) whether the factor model was correctly specified or misspecified. The results showed that when the model was correctly specified, PIV produced estimates that were as accurate as ULS and DWLS. Furthermore, the simulation showed that PIV was more robust to structural misspecifications than ULS and DWLS.
我们进行了一项蒙特卡罗研究,以比较多质工具变量估计(PIV)与未加权最小二乘法(ULS)和对角线加权最小二乘法(DWLS)在二分类指标验证性因素分析模型估计中的性能。模拟涉及 144 种情况(每种情况 1000 次重复),由以下因素组合定义:(a)两种潜在因子模型,(b)四种样本量(100、250、500、1000),(c)三种因子负荷(低、中、高),(d)三种非正态程度(正态、中度和极度非正态),以及(e)因子模型是否正确指定或错误指定。结果表明,当模型正确指定时,PIV 产生的估计与 ULS 和 DWLS 一样准确。此外,模拟表明,PIV 比 ULS 和 DWLS 更能抵抗结构上的错误指定。