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首页> 外文期刊>Applied Psychological Measurement >Direct Likelihood Analysis and Multiple Imputation for Missing Item Scores in Multilevel Cross-Classification Educational Data
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Direct Likelihood Analysis and Multiple Imputation for Missing Item Scores in Multilevel Cross-Classification Educational Data

机译:多层次交叉分类教育数据中缺失项目得分的直接似然分析和多重归因

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Multiple imputation (MI) has become a highly useful technique for handling missing values in many settings. In this article, the authors compare the performance of a MI model based on empirical Bayes techniques to a direct maximum likelihood analysis approach that is known to be robust in the presence of missing observations. Specifically, they focus on handling of missing item scores in multilevel cross-classification item response data structures that may require more complex imputation techniques, and for situations where an imputation model can be more general than the analysis model. Through a simulation study and an empirical example, the authors show that MI is more effective in estimating missing item scores and produces unbiased parameter estimates of explanatory item response theory models formulated as cross-classified mixed models.
机译:多重插补(MI)已成为处理许多设置中缺失值的一种非常有用的技术。在本文中,作者将基于经验贝叶斯技术的MI模型的性能与直接最大似然分析方法进行了比较,该方法在缺少观测值的情况下是可靠的。具体来说,他们专注于处理可能需要更复杂的插补技术的多级交叉分类商品响应数据结构中缺失商品评分的处理,以及插补模型可能比分析模型更通用的情况。通过仿真研究和经验示例,作者表明,MI在估计缺失项目得分方面更有效,并且可以产生解释为交叉分类混合模型的解释性项目响应理论模型的无偏参数估计。

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