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Testing Measurement Invariance with Ordinal Missing Data: A Comparison of Estimators and Missing Data Techniques

机译:测试测量不变性与序数缺失数据:估算器的比较和缺少数据技术

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摘要

Ordinal missing data are common in measurement equivalence/invariance (ME/I) testing studies. However, there is a lack of guidance on the appropriate method to deal with ordinal missing data in ME/I testing. Five methods may be used to deal with ordinal missing data in ME/I testing, including the continuous full information maximum likelihood estimation method (FIML), continuous robust FIML (rFIML), FIML with probit links (pFIML), FIML with logit links (lFIML), and mean and variance adjusted weight least squared estimation method combined with pairwise deletion (WLSMV_PD). The current study evaluates the relative performance of these methods in producing valid chi-square difference tests () and accurate parameter estimates. The result suggests that all methods except for WLSMV_PD can reasonably control the type I error rates of tests and maintain sufficient power to detect noninvariance in most conditions. Only pFIML and lFIML yield accurate factor loading estimates and standard errors across all the conditions. Recommendations are provided to researchers based on the results.
机译:序序数据在测量等价/不变性(ME / I)测试研究中是常见的。但是,缺乏关于处理ME / I测试中的序数缺失数据的适当方法的指导。五种方法可用于处理ME / I测试中的序数缺失数据,包括连续全信息最大似然估计方法(FIML),连续鲁棒FIML(RFIML),FIML具有探测链路(PFIML),FIML具有Logit链路( LFIML),均值和方差调整的重量最小二乘估计方法与成对删除(WLSMV_PD)组合。目前的研究评估了这些方法在产生有效的Chi-Square差异测试()和准确参数估计方面的相对性能。结果表明,除了WLSMV_PD之外的所有方法都可以合理地控制I型测试的错误速率,并在大多数条件下维持足够的功率来检测非致真行为。只有PFIML和LFIML在所有条件下都会产生准确的因子加载估计和标准错误。根据结果​​向研究人员提供建议。

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