Rebutting Existing Misconceptions About Multiple Imputation as a Method for Handling Missing Data
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Abstract
Missing data is a problem that occurs frequently in many scientific areas. The most sophisticated method for dealing with this problem is multiple imputation. Contrary to other methods, like listwise deletion, this method does not throw away information, and partly repairs the problem of systematic dropout. Although from a theoretical point of view multiple imputation is considered to be the optimal method, many applied researchers are reluctant to use it because of persistent misconceptions about this method. Instead of providing an(other) overview of missing data methods, or extensively explaining how multiple imputation works, this article aims specifically at rebutting these misconceptions, and provides…
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540
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- 49.36
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- 100%
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Authors
4Topics & keywords
Topics
Keywords
- Imputation (statistics)
- Missing data
- Computer science
- Psychology
- Data science
- Machine learning
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