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Investigating Parallel Analysis in the Context of Missing Data: A Simulation Study Comparing Six Missing Data Methods

机译:在缺少数据的背景下调查并行分析:拟合六个缺失数据方法的仿真研究

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Exploratory factor analysis is a statistical method commonly used in psychological research to investigate latent variables and to develop questionnaires. Although such self-report questionnaires are prone to missing values, there is not much literature on this topic with regard to exploratory factor analysis-and especially the process of factor retention. Determining the correct number of factors is crucial for the analysis, yet little is known about how to deal with missingness in this process. Therefore, in a simulation study, six missing data methods (an expectation-maximization algorithm, predictive mean matching, Bayesian regression, random forest imputation, complete case analysis, and pairwise complete observations) were compared with respect to the accuracy of the parallel analysis chosen as retention criterion. Data were simulated for correlated and uncorrelated factor structures with two, four, or six factors; 12, 24, or 48 variables; 250, 500, or 1,000 observations and three different missing data mechanisms. Two different procedures combining multiply imputed data sets were tested. The results showed that no missing data method was always superior, yet random forest imputation performed best for the majority of conditions-in particular when parallel analysis was applied to the averaged correlation matrix rather than to each imputed data set separately. Complete case analysis and pairwise complete observations were often inferior to multiple imputation.
机译:探索性因子分析是一种常用于心理学研究的统计方法,以调查潜在变量和制定问卷。虽然这样的自我报告问卷易于缺少价值,但在探索性因子分析方面没有有很多文献 - 尤其是因子保留的过程。确定正确数量的因素对于分析至关重要,但对于如何处理此过程中的缺失而众所周知。因此,在六个缺失的数据方法(期望最大化算法,预测均值算法,预测平均匹配,贝叶斯回归,随机森林归因,完整的案例分析和成对完全观察)中,比选择的并行分析的准确性进行比较作为保留标准。模拟数据,用于相关和不相关的因子结构,有两个,四个或六个因素; 12,24或48个变量; 250,500或1,000个观察和三种不同的缺失数据机制。测试了两个不同的程序,组合了乘法算法集。结果表明,没有缺失的数据方法总是优越的,但是对于大多数条件而言,对于大多数条件而言,对于将平行分析应用于平均相关矩阵而不是单独设置的每个避税数据来说,对于大多数条件而言,对于大多数条件而言,最佳的随机森林借出。完整的案例分析和成对完全观察通常不如多种估算。

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