Flexible imputation of missing data
著者
書誌事項
Flexible imputation of missing data
(Interdisciplinary statistics)
CRC Press, 2021
2nd ed
- : pbk
大学図書館所蔵 全2件
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注記
"First issued in paperback 2021"--T.p. verso
Includes bibliographical references (p. 351-392) and indexes
内容説明・目次
内容説明
Missing data pose challenges to real-life data analysis. Simple ad-hoc fixes, like deletion or mean imputation, only work under highly restrictive conditions, which are often not met in practice. Multiple imputation replaces each missing value by multiple plausible values. The variability between these replacements reflects our ignorance of the true (but missing) value. Each of the completed data set is then analyzed by standard methods, and the results are pooled to obtain unbiased estimates with correct confidence intervals. Multiple imputation is a general approach that also inspires novel solutions to old problems by reformulating the task at hand as a missing-data problem.
This is the second edition of a popular book on multiple imputation, focused on explaining the application of methods through detailed worked examples using the MICE package as developed by the author. This new edition incorporates the recent developments in this fast-moving field.
This class-tested book avoids mathematical and technical details as much as possible: formulas are accompanied by verbal statements that explain the formula in accessible terms. The book sharpens the reader's intuition on how to think about missing data, and provides all the tools needed to execute a well-grounded quantitative analysis in the presence of missing data.
目次
1. Introduction 2. Multiple imputation 3. Univariate missing data 4. Multivariate missing data 5. Analysis of imputed data 6. Imputation in practice 7. Multilevel multiple imputation 8. Individual Causal Effects 9. Measurement issues 10. Selection issues 11. Longitudinal data 12. Conclusion
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