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Missing item responses in latent growth analysis: Item response theory versus classical test theory

机译:潜在增长分析中缺少项目响应:项目响应理论与经典测试理论

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摘要

In medical research, repeated questionnaire data is often used to measure and model latent variables across time. Through a novel imputation method, a direct comparison is made between latent growth analysis under classical test theory and item response theory, while also including effects of missing item responses. For classical test theory and item response theory, by means of a simulation study the effects of item missingness on latent growth parameter estimates are examined given longitudinal item response data. Several missing data mechanisms and conditions are evaluated in the simulation study. The additional effects of missingness on differences in classical test theory- and item response theory-based latent growth analysis are directly assessed by rescaling the multiple imputations. The multiple imputation method is used to generate latent variable and item scores from the posterior predictive distributions to account for missing item responses in observed multilevel binary response data. It is shown that a multivariate probit model, as a novel imputation model, improves the latent growth analysis, when dealing with missing at random (MAR) in classical test theory. The study also shows that the parameter estimates for the latent growth model using item response theory show less bias and have smaller MSE’s compared to the estimates using classical test theory.
机译:在医学研究中,重复的问卷数据通常用于测量和模拟跨时间的潜在变量。通过一种新颖的归因方法,在经典测试理论和项目响应理论下潜伏的生长分析之间进行了直接比较,同时还包括缺失物品响应的影响。对于古典测试理论和项目响应理论,通过模拟研究,对纵向项目响应数据进行了物品缺失对潜伏的增长参数估计的影响。在仿真研究中评估了几种缺失的数据机制和条件。通过重新分配多重避免,直接评估遗漏对古典测试理论和项目响应理论的差异分析的额外影响。多个归纳方法用于生成从后预测分布的潜在变量和项目得分,以便在观察到的多级二进制响应数据中丢失项目响应。结果表明,当在经典测试理论中随机(MAR)缺失时,多变量探测模型改善了潜伏的生长分析。该研究还表明,与使用经典测试理论的估计相比,使用物品响应理论的潜在生长模型的参数估计表现出较少的偏差并且具有较小的MSE。

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