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what are the advantages and disadvantages of these two packages for multiple imputation?

Here is my motivation for asking this question: I have used the mi package so far but I am unable to get convergence. My dataset is about 10,231x28. Four variables have 18-20% missing values, one has 14% and the rest is around 5% (or below). No convergence even after running on a server for 18 hours. Now I am wondering whether mice might work better.

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closed as not constructive by joran, Chase, mnel, Kev Oct 21 '12 at 22:42

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Is it not converging or is it just taking along, long time? – Ari B. Friedman Oct 21 '12 at 19:43
After 18 hours, it displays the message Time out, mi did not converge ( Sun Oct 21 16:59:57 2012 ). There is an argument max.minutes to the mi function which allows you to set the max run time. I set this to 1080 (the default is 20) and received the message above at the end. Note that I still get my imputed datasets but it's not reassuring. – user2503795 Oct 21 '12 at 21:03
Have you seen this? MI is a sophisticated statistical procedure with a complicated estimation procedure. Changing a package is unlikely to solve your problems. Let the difficult work begin! :-) . If you need help on diagnostics, I recommend editing your question to reflect the new focus, then flag it for moderator attention as "Please migrate to CrossValidated." – Ari B. Friedman Oct 21 '12 at 21:07
Yes, I am using that paper. At the end, they write "One caution with the current incarnation is that mi may take some time to converge with big datasets with a high rate of missingness across many variables. We are currently investigating approaches to increase the computational efficiency of the algorithm". That statement motivated my question: Has mi improved and is mice better suited for these situations? I framed it more generally because I thought new users might be interested in the adv./disadv. of each package. But I will look into the diagnostics and might edit my question. – user2503795 Oct 21 '12 at 21:19

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