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Simple imputation methods versus direct likelihood analysis for missing item scores in multilevel educational data

机译:简单插补方法与直接似然分析相结合的多层次教育数据中缺失项目得分

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Missing data, such as item responses in multilevel data, are ubiquitous in educational research settings. Researchers in the item response theory (IRT) context have shown that ignoring such missing data can create problems in the estimation of the IRT model parameters. Consequently, several imputation methods for dealing with missing item data have been proposed and shown to be effective when applied with traditional IRT models. Additionally, a nonimputation direct likelihood analysis has been shown to be an effective tool for handling missing observations in clustered data settings. This study investigates the performance of six simple imputation methods, which have been found to be useful in other IRT contexts, versus a direct likelihood analysis, in multilevel data from educational settings. Multilevel item response data were simulated on the basis of two empirical data sets, and some of the item scores were deleted, such that they were missing either completely at random or simply at random. An explanatory IRT model was used for modeling the complete, incomplete, and imputed data sets. We showed that direct likelihood analysis of the incomplete data sets produced unbiased parameter estimates that were comparable to those from a complete data analysis. Multiple-imputation approaches of the two-way mean and corrected item mean substitution methods displayed varying degrees of effectiveness in imputing data that in turn could produce unbiased parameter estimates. The simple random imputation, adjusted random imputation, item means substitution, and regression imputation methods seemed to be less effective in imputing missing item scores in multilevel data settings.
机译:缺少数据,例如多级数据中的项目响应,在教育研究环境中无处不在。项目响应理论(IRT)上下文中的研究人员表明,忽略此类丢失的数据可能会在IRT模型参数的估计中产生问题。因此,已经提出了几种用于处理缺失项目数据的插补方法,这些方法在与传统IRT模型一起使用时显示出了有效性。此外,非截断直接似然分析已被证明是处理聚类数据设置中缺失观测值的有效工具。这项研究调查了六种简单的插补方法的性能,这些方法在来自教育机构的多级数据中,与直接似然分析相比,在其他IRT环境中很有用。在两个经验数据集的基础上模拟了多级项目响应数据,并删除了一些项目评分,因此它们要么完全随机丢失,要么完全随机丢失。使用解释性IRT模型对完整,不完整和估算的数据集进行建模。我们表明,对不完整数据集的直接似然分析产生的无偏参数估计值与来自完整数据分析的估计值可比。双向均值和校正项均值替换方法的多次输入方法在估算数据中显示出不同程度的有效性,进而可以产生无偏参数估计。简单的随机插补,调整后的随机插补,项均值替换和回归插补方法似乎在多级数据设置中插补缺失项得分时效果较差。

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