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Relative Accuracy of Two Modified Parallel Analysis Methods that Use the Proper Reference Distribution

机译:使用适当的参考分布的两个修改的并行分析方法的相对精度

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Parallel analysis (PA) assesses the number of factors in exploratory factor analysis. Traditionally PA compares the eigenvalues for a sample correlation matrix with the eigenvalues for correlation matrices for 100 comparison datasets generated such that the variables are independent, but this approach uses the wrong reference distribution. The proper reference distribution of eigenvalues assesses the kth factor based on comparison datasets with k-1 underlying factors. Two methods that use the proper reference distribution are revised PA (R-PA) and the comparison data method (CDM). We compare the accuracies of these methods using Monte Carlo methods by manipulating the factor structure, factor loadings, factor correlations, and number of observations. In the 17 conditions in which CDM was more accurate than R-PA, both methods evidenced high accuracies (i.e.,94.5%). In these conditions, CDM had slightly higher accuracies (mean difference of 1.6%). In contrast, in the remaining 25 conditions, R-PA evidenced higher accuracies (mean difference of 12.1%, and considerably higher for some conditions). We consider these findings in conjunction with previous research investigating PA methods and concluded that R-PA tends to offer somewhat stronger results. Nevertheless, further research is required. Given that both CDM and R-PA involve hypothesis testing, we argue that future research should explore effect size statistics to augment these methods.
机译:并行分析(PA)评估探索因子分析中因素的数量。传统上Pa将样本相关矩阵的特征值与用于100个比较数据集的相关矩阵的特征值进行比较,使得变量是独立的,但这种方法使用错误的参考分布。特征值的适当参考分布基于具有K-1潜在因素的比较数据集来评估KTH因子。使用适当的参考分布的两种方法是修订的PA(R-PA)和比较数据方法(CDM)。通过操纵因子结构,因子载荷,因子相关性和观测数量,我们使用蒙特卡罗方法比较这些方法的准确性。在该方法中,其中CDM比R-PA更精确的条件,两种方法都证明了高精度(即,& 94.5%)。在这些条件下,CDM的准确性略高(平均差异为1.6%)。相比之下,在剩余的25条条件下,R-PA证明了更高的准确性(平均差异为12.1%,对于某些条件相当高)。我们将这些发现与先前的研究调查PA方法一起考虑并得出结论,R-PA倾向于提供一些更强烈的结果。然而,需要进一步研究。鉴于CDM和R-PA都涉及假设检测,我们认为未来的研究应该探索效果大小统计数据来增加这些方法。

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