Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
5792915 | Preventive Veterinary Medicine | 2016 | 35 Pages |
Abstract
An additional simulation study (1000 runs for each of the three missing data mechanisms) compared MI and CC analyses for data in which varying levels (n = 7) of missing data were created in predictor variables. This study showed that MI analyses generally produced results that were less biased on average, were more precise (smaller SEs), were more consistent (less variability between simulation runs) and consequently were more likely to produce estimates that were close to the “truth” (results obtained from a data set with no missing values). While the benefit of MI varied with the mechanism used to generate the missing data, MI always performed as well as, or better than, CC analysis.
Keywords
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Authors
Ian R. Dohoo, Christel R. Nielsen, Ulf Emanuelson,