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After running MICE package, the number of missing values are shrinked from 147428 to 46093 in each of the 5 complete imputation sets. But isn't it supposed to be 0 NAs instead???

Thanks!

Here is my MICE code:

imp = mice(newdata)

imputationSet1 = complete(imp)
imputationSet2 = complete(imp,2)
imputationSet3 = complete(imp,3)
imputationSet4 = complete(imp,4)
imputationSet5 = complete(imp,5)
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I have a similar question at stackoverflow.com/questions/25472640/…, but mine has a working example. –  Jameson Quinn Aug 24 '14 at 14:33
    
You should provide some information on your dataset. How many variables? How many cases? What variables are these? It is likely that mice cannot fit the imputation model properly. Some cases may have not sufficient data to be imputed at all. Finally, it could be a combination of the two. –  SimonG Aug 24 '14 at 17:09

1 Answer 1

Yeah there should be no missing values left.

I bet there are some rows in your data set that are so badly mangled with missingness that mice's imputation models break down. Is it possible that there are rows in your dataset where every value is missing? That would do it.

Another thing to try on a whim - crank up the number of iterations to 15: imp = mice(newdata, maxit = 15). Does that change anything?

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Raising the number of iterations will only work for issues with autocorrelation and non-convergence. Even 15 iterations per imputation is not much considerung what other packages do. The algorithm in mice is quite efficient and is surprisingly free of these issues because the (filled) missing values in the target variable aren't used to fit the model in each iteration (only those in the covariates). The number of iterations is therefore not such an issue in mice. Your other point I find very plausible, but I think it's not the only explanation (see comment on Q). –  SimonG Aug 25 '14 at 16:04
    
Yeah I was grasping at straws with the iteration thing. Even after iteration 1, there should be no missing values. Good call out. –  Ben Ogorek Aug 26 '14 at 4:43

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