Afternoon,
I am new to MLwiN and to multiple imputation of missing data.
I have a longitudinal data set with missing data present in some categorical/binary predictor variables.
I wish to use MI to increase the working sample size for the modelling procedure.
What is the best way to do this? I get errors when using the MI macro saying that there is an outcome length mismatch - I guess this is because individuals may be measured between 1 and 9 times.
I am thinking that REALCOM can cope with this scenario. I am also currently looking at MICE in R.
Any help would be appreciated.
Thanks,
Justin Grace
Multiple imputation for longitudinal data
Re: Multiple imputation for longitudinal data
additional:
I get a data length mismatch error when imputing using MLwiN and similar using the macro. I presume this is because the data are unbalanced and these methods cannot handle this?
I get a data length mismatch error when imputing using MLwiN and similar using the macro. I presume this is because the data are unbalanced and these methods cannot handle this?
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- Joined: Sun Sep 06, 2009 5:30 pm
Re: Multiple imputation for longitudinal data
You can ceratinly use realcom for this. The data should be presented as a 2-level structure, i.e. sorted by measurement occasion within individual. Refer to manual for details. 
