Missing Data Analysis: Making It Work in the Real World
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Abstract
This review presents a practical summary of the missing data literature, including a sketch of missing data theory and descriptions of normal-model multiple imputation (MI) and maximum likelihood methods. Practical missing data analysis issues are discussed, most notably the inclusion of auxiliary variables for improving power and reducing bias. Solutions are given for missing data challenges such as handling longitudinal, categorical, and clustered data with normal-model MI; including interactions in the missing data model; and handling large numbers of variables. The discussion of attrition and nonignorable missingness emphasizes the need for longitudinal diagnostics and for reducing the uncertainty about…
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6,048
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- 86.04
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- 100%
- References
- 83
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Authors
1Topics & keywords
Topics
Keywords
- Missing data
- Categorical variable
- Attrition
- Imputation (statistics)
- Computer science
- Sketch
- Statistics
- Data mining
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