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Handling Missing Data in Item Response Theory. Assessing the Accuracy of a Multiple Imputation Procedure Based on Latent Class Analysis

机译:处理项目响应理论中缺失的数据。 基于潜在课程分析评估多重估算过程的准确性

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A critical issue in analyzing multi-item scales is missing data treatment. Previous studies on this topic in the framework of item response theory have shown that imputation procedures are in general associated with more accurate estimates of item location and discrimination parameters under several missing data generating mechanisms. This paper proposes a model-based multiple imputation procedure for multiple categorical items (dichotomous, multinomial or Likert-type) which relies on the results of latent class analysis to impute missing item responses. The effectiveness of the proposed technique is assessed in the estimation of item response theory parameters using a range of ad hoc measures. The accuracy of the method is assessed with respect to other single and multiple imputation procedures, under different missing data generating mechanisms and different rate of missingness (5% to 30%). The simulation results indicate that the proposed technique performs satisfactorily under all conditions and has the greatest potential with severe rates of missingness and under non ignorable missing data mechanisms. The method was implemented in R code with a function that calls scripts from a latent class analysis routine.
机译:分析多项尺度的关键问题是缺少数据处理。以前关于项目响应理论框架中的本主题的研究表明,估算过程通常与若干缺失数据生成机制下的项目位置和识别参数的更准确估计相关联。本文提出了一种基于模型的多个归纳程序,用于多个分类项(二分法,多项式或李克特型),其依赖于潜在类分析的结果,以赋予缺失的项目响应。通过一系列临时措施评估所提出的技术的有效性在项目响应理论参数的估算中。在不同缺失数据产生机制和不同的缺失率(5%至30%)下,评估该方法的准确性。仿真结果表明,该技术在所有条件下表现令人满意,具有最大的潜力,严重失踪率和非无知的缺失数据机制。该方法以R代码实现,其中函数从潜在类分析例程调用脚本。

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