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Bias of factor loadings from questionnaire data with imputed scores

机译:带有估算分数的问卷数据中的因素负荷偏差

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This study investigated the bias of factor loadings obtained from incomplete questionnaire data with imputed scores. Three models were used to generate discrete ordered rating scale data typical of questionnaires, also known as Likert data. These methods were the multidimensional polytomous latent trait model, a normal ogive item response theory model, and the discretized normal model. Incomplete data due to nonresponse were simulated using either missing completely at random or not missing at random mechanisms. Subsequently, for each incomplete data matrix, four imputation methods were applied for imputing item scores. Based on a completely crossed six-factor design, it was concluded that in general, bias was small for all data simulation methods and all imputation methods, and under all nonresponse mechanisms. Imputation method, two-way-plus-error, had the smallest bias in the factor loadings. Bias based on the discretized normal model was greater than that based on the other two models.
机译:这项研究调查了从不完整的问卷数据中获得的因素负荷的偏倚与估算得分。使用三个模型来生成典型的问卷的离散排序的评级量表数据,也称为Likert数据。这些方法是多维多义潜在特征模型,正态项目反应理论模型和离散正态模型。使用随机机制完全丢失或随机机制不丢失来模拟由于无响应而导致的不完整数据。随后,对于每个不完整的数据矩阵,采用四种估算方法估算项目得分。基于完全交叉的六因素设计,得出的结论是,一般而言,所有数据模拟方法和所有插补方法以及所有无响应机制下的偏差都较小。插补方法,双向加误差,在因子载荷中具有最小的偏差。基于离散正常模型的偏差大于基于其他两个模型的偏差。

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