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Summed Score Likelihood–Based Indices for Testing Latent Variable Distribution Fit in Item Response Theory

机译:用于测试潜在可变分配的基于概念基于概念的索引符合项目响应理论

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摘要

In standard item response theory (IRT) applications, the latent variable is typically assumed to be normally distributed. If the normality assumption is violated, the item parameter estimates can become biased. Summed score likelihood–based statistics may be useful for testing latent variable distribution fit. We develop Satorra–Bentler type moment adjustments to approximate the test statistics’ tail-area probability. A simulation study was conducted to examine the calibration and power of the unadjusted and adjusted statistics in various simulation conditions. Results show that the proposed indices have tail-area probabilities that can be closely approximated by central chi-squared random variables under the null hypothesis. Furthermore, the test statistics are focused. They are powerful for detecting latent variable distributional assumption violations, and not sensitive (correctly) to other forms of model misspecification such as multidimensionality. As a comparison, the goodness-of-fit statistic M _(2)has considerably lower power against latent variable nonnormality than the proposed indices. Empirical data from a patient-reported health outcomes study are used as illustration.
机译:在标准项目响应理论(IRT)应用中,通常假设潜变量通常分布。如果违反正常性假设,则项目参数估计值可能会偏置。总结得分似然基统计可能对测试潜在可变分配合适有用。我们开发Satorra-Bentler类型时刻调整,以近似测试统计数据的尾部区域概率。进行了模拟研究,以检查各种仿真条件下未调整和调整统计数据的校准和功率。结果表明,该拟议指标具有尾部区域概率,可以在空假设下由中央Chi平方随机变量密切近似。此外,测试统计数据集中。它们是针对检测潜在的可变分布假设违规,而不敏感(正确)到其他形式的模型误操作,例如多限形式。作为比较,拟合统计统计M _(2)的优点与潜在的变量非正常数相比具有比提出的指标的功率更低。来自患者报告的健康结果研究的经验数据用作图示。

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