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The Effect of Small Sample Size on Measurement Equivalence of Psychometric Questionnaires in MIMIC Model: A Simulation Study

机译:小样本量对MIMIC模型中心理问卷的测量当量的影响:模拟研究

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摘要

Evaluating measurement equivalence (also known as differential item functioning (DIF)) is an important part of the process of validating psychometric questionnaires. This study aimed at evaluating the multiple indicators multiple causes (MIMIC) model for DIF detection when latent construct distribution is nonnormal and the focal group sample size is small. In this simulation-based study, Type I error rates and power of MIMIC model for detecting uniform-DIF were investigated under different combinations of reference to focal group sample size ratio, magnitude of the uniform-DIF effect, scale length, the number of response categories, and latent trait distribution. Moderate and high skewness in the latent trait distribution led to a decrease of 0.33% and 0.47% power of MIMIC model for detecting uniform-DIF, respectively. The findings indicated that, by increasing the scale length, the number of response categories and magnitude DIF improved the power of MIMIC model, by 3.47%, 4.83%, and 20.35%, respectively; it also decreased Type I error of MIMIC approach by 2.81%, 5.66%, and 0.04%, respectively. This study revealed that power of MIMIC model was at an acceptable level when latent trait distributions were skewed. However, empirical Type I error rate was slightly greater than nominal significance level. Consequently, the MIMIC was recommended for detection of uniform-DIF when latent construct distribution is nonnormal and the focal group sample size is small.
机译:评估测量当量(也称为差异项功能(DIF))是验证心理测验问卷过程的重要组成部分。这项研究旨在评估当潜在结构分布不正常且焦点小组样本量较小时,用于DIF检测的多指标多原因(MIMIC)模型。在这项基于仿真的研究中,研究了I组错误率和MIMIC模型用于检测均匀DIF的能力,其中包括对焦点小组样本大小比,均匀DIF效果的大小,标度长度,响应数的不同组合类别和潜在特征分布。潜在性状分布中度偏斜和高度偏斜导致MIMIC模型检测均匀DIF的功效分别降低了0.33%和0.47%。结果表明,通过增加标度长度,响应类别的数量和幅度DIF提高了MIMIC模型的功效,分别提高了3.47%,4.83%和20.35%。它还使MIMIC方法的I型误差分别降低了2.81%,5.66%和0.04%。这项研究表明,当潜在特征分布偏斜时,MICIC模型的能力处于可接受的水平。但是,经验I类错误率略高于名义显着性水平。因此,当潜在结构分布不正常且焦点小组样本量较小时,建议使用MIMIC检测均匀DIF。

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