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A Bootstrap Generalization of Modified Parallel Analysis for IRT Dimensionality Assessment

机译:IRT维数评估的改进并行分析的Bootstrap概括

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This article introduces a bootstrap generalization to the Modified Parallel Analysis (MPA) method of test dimensionality assessment using factor analysis. This methodology, based on the use of Marginal Maximum Likelihood nonlinear factor analysis, provides for the calculation of a test statistic based on a parametric bootstrap using the MPA methodology for generation of synthetic datasets. Performance of the bootstrap test was compared with the likelihood ratio difference test and the DIMTEST procedure using a Monte Carlo simulation. The bootstrap test was found to exhibit much better control of the Type I error rate than the likelihood ratio difference test, and comparable power to DIMTEST under most conditions. A major conclusion to be taken from this research is that under many real-world conditions, the bootstrap MPA test presents a useful alternative for practitioners using Marginal Maximum Likelihood factor analysis to test for multidimensional testing data.
机译:本文向使用因子分析的测试维数评估的改进并行分析(MPA)方法引入了引导程序概括。该方法基于使用边际最大似然非线性因子分析,提供了基于参数自举的测试统计量的计算,并使用MPA方法生成了合成数据集。使用蒙特卡洛模拟将自举测试的性能与似然比差异测试和DIMTEST程序进行了比较。发现自举测试显示出对I型错误率的控制要好于似然比差异测试,并且在大多数情况下具有与DIMTEST相当的功效。从这项研究中得出的主要结论是,在许多实际条件下,引导MPA测试为使用边际最大似然因子分析来测试多维测试数据的从业人员提供了一种有用的选择。

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