Working With Missing Values
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Abstract
Less than optimum strategies for missing values can produce biased estimates, distorted statistical power, and invalid conclusions. After reviewing traditional approaches (listwise, pairwise, and mean substitution), selected alternatives are covered including single imputation, multiple imputation, and full information maximum likelihood estimation. The effects of missing values are illustrated for a linear model, and a series of recommendations is provided. When missing values cannot be avoided, multiple imputation and full information methods offer substantial improvements over traditional approaches. Selected results using SPSS, NORM, Stata (mvis/micombine), and M plus are included as is a table of…
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1,760
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1Topics & keywords
Topics
Keywords
- Missing data
- Imputation (statistics)
- Pairwise comparison
- Statistics
- Maximum likelihood
- Computer science
- Software
- Econometrics
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