Investigation of the Effect of Missing Data Handling Methods on Measurement Invariance of Multi-Dimensional Structures

Pub Date : 2020-09-21 DOI:10.21031/EPOD.749370
Mehmet Ali Işıkoğlu, B. Atar
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Abstract

The purpose of this study was to compare the missing data handling methods on measurement invariance of multi-dimensional structures. For this purpose, data of 10857 students who participated in PISA 2015 administration from Turkey and Singapore and fully responded to the items related to affective characteristics of science literacy was used. Data with different percentages of missing data (5%, 10%, and 20% missing data) were generated from the complete data set with missing completely at random (MCAR) mechanism. In all data sets, missing data was completed with listwise deletion (LD), serial mean imputation (SMI), regression imputation (RI), expectation maximization (EM), and multiple imputation (MI) methods. Measurement invariance of the construct being measured between countries on completed data sets was investigated with multiple-group confirmatory factor analysis (MG-CFA). Findings from each dataset were compared with reference values. In the results of the study, RI and MI methods in the data set with 5% missing, EM method in the data set with 10% missing, and MI method in the data set with 20% missing gave the more similar results to the reference values than the other methods.
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缺失数据处理方法对多维结构测量不变性影响的研究
本研究的目的是比较多维结构测量不变性的缺失数据处理方法。为此,使用了来自土耳其和新加坡的10857名参与2015年PISA管理的学生的数据,他们对与科学素养情感特征相关的项目做出了充分的反应。具有不同百分比缺失数据(5%、10%和20%缺失数据)的数据是从具有完全随机缺失(MCAR)机制的完整数据集生成的。在所有数据集中,缺失数据采用列表删除(LD)、序列平均插补(SMI)、回归插补(RI)、期望最大化(EM)和多重插补(MI)方法完成。使用多组验证性因子分析(MG-CFA)研究了在已完成的数据集上国家之间测量的结构的测量不变性。将每个数据集的结果与参考值进行比较。在研究结果中,与其他方法相比,缺失5%数据集中的RI和MI方法、缺失10%数据集中的EM方法和缺失20%数据集中的MI方法给出了与参考值更相似的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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