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Normal Theory Two-Stage ML Estimator When Data Are Missing at the Item Level
by
Savalei, Victoria
, Rhemtulla, Mijke
in
Comparative Analysis
/ Computation
/ Data analysis
/ Efficiency
/ Maximum Likelihood Statistics
/ Missing data
/ Path Analysis
/ Regression analysis
/ Statistical Analysis
/ Statistical Bias
/ Structural equation modeling
/ Structural Equation Models
/ Test Items
2017
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Normal Theory Two-Stage ML Estimator When Data Are Missing at the Item Level
by
Savalei, Victoria
, Rhemtulla, Mijke
in
Comparative Analysis
/ Computation
/ Data analysis
/ Efficiency
/ Maximum Likelihood Statistics
/ Missing data
/ Path Analysis
/ Regression analysis
/ Statistical Analysis
/ Statistical Bias
/ Structural equation modeling
/ Structural Equation Models
/ Test Items
2017
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Do you wish to request the book?
Normal Theory Two-Stage ML Estimator When Data Are Missing at the Item Level
by
Savalei, Victoria
, Rhemtulla, Mijke
in
Comparative Analysis
/ Computation
/ Data analysis
/ Efficiency
/ Maximum Likelihood Statistics
/ Missing data
/ Path Analysis
/ Regression analysis
/ Statistical Analysis
/ Statistical Bias
/ Structural equation modeling
/ Structural Equation Models
/ Test Items
2017
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Normal Theory Two-Stage ML Estimator When Data Are Missing at the Item Level
Journal Article
Normal Theory Two-Stage ML Estimator When Data Are Missing at the Item Level
2017
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Overview
In many modeling contexts, the variables in the model are linear composites of the raw items measured for each participant; for instance, regression and path analysis models rely on scale scores, and structural equation models often use parcels as indicators of latent constructs. Currently, no analytic estimation method exists to appropriately handle missing data at the item level. Item-level multiple imputation (MI), however, can handle such missing data straightforwardly. In this article, we develop an analytic approach for dealing with item-level missing data—that is, one that obtains a unique set of parameter estimates directly from the incomplete data set and does not require imputations. The proposed approach is a variant of the two-stage maximum likelihood (TSML) methodology, and it is the analytic equivalent of item-level MI. We compare the new TSML approach to three existing alternatives for handling item-level missing data: scale-level full information maximum likelihood, available-case maximum likelihood, and item-level MI. We find that the TSML approach is the best analytic approach, and its performance is similar to item-level MI. We recommend its implementation in popular software and its further study.
Publisher
SAGE Publishing,SAGE Publications,American Educational Research Association
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