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Measurement Bias Detection Through Factor Analysis

机译:通过因子分析进行测量偏差检测

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Measurement bias is defined as a violation of measurement invariance, which can be investigated through multigroup factor analysis (MGFA), by testing across-group differences in intercepts (uniform bias) and factor loadings (nonuniform bias). Restricted factor analysis (RFA) can also be used to detect measurement bias. To also enable nonuniform bias detection, we extend RFA with latent moderated structures (LMS) or use a random slope parameterization (RSP). In a simulation study we compare the MGFA, RFA/LMS, and RFA/RSP methods in detecting measurement bias, varying type of bias (uniform, nonuniform), type of the variable that violates measurement invariance (dichotomous, continuous), and its relationship with the trait that we want to measure (independent, dependent). For each condition, 500 sets of data are generated and analyzed with each of the three detection methods, in single run and in an iterative procedure. The RFA methods outperform MGFA when the violating variable is continuous.
机译:测量偏差定义为违反测量不变性,可以通过测试截距的跨组差异(均匀偏差)和因子负载(非均匀偏差)来通过多组因子分析(MGFA)进行调查。限制因素分析(RFA)也可用于检测测量偏差。为了也能够实现非均匀偏差检测,我们使用潜在的适度结构(LMS)扩展了RFA或使用了随机斜率参数化(RSP)。在仿真研究中,我们比较了MGFA,RFA / LMS和RFA / RSP方法在检测测量偏差,偏差的变化类型(均匀,不均匀),违反测量不变性的变量类型(二分,连续)及其关系方面的比较具有我们要测量的特征(独立,相关)。对于每种条件,可以通过三种方法中的每一种以迭代方式生成和分析500组数据。当违规变量为连续变量时,RFA方法的性能优于MGFA。

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