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.