Multiple Imputation of Missing Values in Economic Surveys: Comparison of Competing Algorithms
نویسندگان
چکیده
There are many competing computational algorithms in multiple imputation. To this date, however, it is unknown which of these algorithms outperforms the others under what circumstances. In this paper, we describe the mechanisms of various multiple imputation algorithms and compare their performance in a variety of situations to determine which algorithm is best suited to the imputation of missing values in official economic statistics.
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